CN103679142B - A kind of recognition method for target human body based on space constraint - Google Patents

A kind of recognition method for target human body based on space constraint Download PDF

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CN103679142B
CN103679142B CN201310636477.4A CN201310636477A CN103679142B CN 103679142 B CN103679142 B CN 103679142B CN 201310636477 A CN201310636477 A CN 201310636477A CN 103679142 B CN103679142 B CN 103679142B
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foreground area
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image block
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CN103679142A (en
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陈普强
郭立君
柯伟扬
张�荣
赵杰煜
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Ningbo Skyview Image Technology Co., Ltd.
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Ningbo University
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Abstract

nullThe invention discloses a kind of recognition method for target human body based on space constraint,It extracts the foreground area of the image in image to be identified and image object storehouse,By the sizes such as the foreground area of the image in image object storehouse is divided into and the first image block of overlapping each other,By the sizes such as the foreground area of image to be identified is divided into and the second image block of overlapping each other,Extract the first image block and the characteristic vector of the second image block again,And find most like piece in second image block each image in image object storehouse,Extract the minimum range block sequence of the first image block and the second image block the most respectively,Then it is calculated image to be identified and relative to the matching score of the image in image object storehouse thus carries out human bioequivalence,Advantage is to be dissolved in matching score abundant structural information,Efficiently avoid shooting angle、Posture and the impact of light change,Can effectively identify the minute differences in the similar area of different human body and need not image to be identified is marked.

Description

A kind of recognition method for target human body based on space constraint
Technical field
The present invention relates to a kind of recognition method for target human body, especially relate to a kind of target body based on space constraint and know Other method.
Background technology
Target body identification (hereinafter referred to as human bioequivalence) be judge the pedestrian that occurs under a camera whether with another The pedestrian occurred under individual camera is same a group traveling together, and human bioequivalence problem is referred to as non-overlapped many in computer vision field Human body in camera system reappears problem (Person Re-identification).Human body recognition method is at intelligent video monitoring Field has important application, and its purposes mainly includes target following in the extraction of target body, non-overlapped camera system.Along with Popularizing of intelligent monitoring, human body recognition method is more paid attention to, from researcher in recent years to human body recognition method Research is learnt, current human body recognition method still suffers from huge challenge: first, and the image resolution ratio captured by camera is relatively Low, recognition of face or other biological feature identification technique are almost dfficult to apply to human bioequivalence, and this allows for the master of human bioequivalence Will be according to being limited in human body appearance features aspect;Secondly, in order to simplify human body recognition method, usually assume that same a group traveling together is not Constant with the dress ornament under scene, but under different scenes (as shown in Figure 1a), angle that pedestrian is shot, posture, background, light The impact of the factor such as line, camera parameters, still brings huge challenge to human bioequivalence.Solve the side of human bioequivalence at present Method mainly has two kinds: supervised learning method and unsupervised learning method.
For supervised learning method, Prosser et al. (B.Prosser, W.Zheng, S.Gong, T.Xiang, and Q.Mary.Person re-identification by support vector ranking.In BMVC, 2010. based on propping up Hold the human bioequivalence of vector machine ranking, Britain's machine vision meeting) human bioequivalence problem is converted into ranking problem, utilize and improve SVM algorithm carry out human bioequivalence;Gray et al. (D.Gray and H.Tao.Viewpoint invariant Pedestrian recognition with an ensemble of localized features.ECCV, 2008. combine The human bioequivalence of the angle invariability of multiple local features, European Computer vision international conference) combine the office such as space and color Portion's feature, utilizes boosting algorithm to carry out human bioequivalence;Schwartz et al. (W.Schwartz and L.Davis.Learning discriminative appearance-based models using partial least squares.In XXII Brazilian Symposium on Computer Graphics and Image Processing (SIBGRAPI), 2009. learning models based on PLS identification performance characteristic, the calculating of 22 Brazil seminar Machine graph and image processing) use the local least squares method color to extracting, gradient, texture these three high dimensional feature to carry out respectively Dimensionality reduction, and give different weights according to respective recognition capability and carry out human bioequivalence;Li et al. (W.Li and X.Wang.Locally aligned feature transforms across views.In CVPR, 2013. based on visual angle Local feature conversion, IEEE international computer vision and pattern-recognition meeting) image under two different cameras is first turned Turn to different feature spaces, carry out metric learning further according to different feature spaces respectively, thus carry out human bioequivalence; Zheng et al. (W.Zheng, S.Gong, and T.Xiang.Person re-identification by Probabilistic relative distance comparison.In CVPR, 2011. probability based on relative distance Human bioequivalence relatively, IEEE international computer vision and pattern-recognition meeting) human bioequivalence problem is asked as distance study Topic carries out human bioequivalence;Weinberger et al. (K.Q.Weinberger and L.K.Saul.Fast solvers and Efficient implementations for distance metric learning.In ICML, 2008. the most effectively Learning distance metric method, machine learning international conference) propose LMNN algorithm, this algorithm is by of a sort distance more Closely, rather than of a sort realize human bioequivalence apart from farther punishment study;Kostinger et al. (M.Kostinger, M.Hirzer,P.Wohlhart,P.Roth,and H.Bischof.Large scale metric learning from Equivalence constraints.In CVPR, 2012. large scale metric learnings based on equivalent constraint, the IEEE world is counted Calculation machine vision and pattern-recognition meeting) utilize a loose learning distance metric to process human bioequivalence problem.These have prison Educational inspector's learning method learns after being required to first be marked human sample, when camera environment changes, such as shooting angle, posture Change with light, need again human sample to be marked, it is impossible to effectively process a large amount of human sample and varying environment Under human sample identification.
For unsupervised learning method, mainly propose more effective characteristic vector and directly calculate the distance between image. M.Farenzena et al. (M.Farenzena, L.Bazzani, A.Perina, V.Murino, and M.Cristani.Person re-identification by symmetry-driven accumulation of local features.In CVPR, 2010. based on the cumulative human bioequivalence of symmetry local feature, IEEE international computer vision and pattern-recognition meeting) combine whole The HSV feature of body, the feature of maximum stable block, repeat the feature these three part of many blocks, calculate between two width images Distance carry out human bioequivalence;R.Zhao et al. (R.Zhao, W.Ouyang, and X.Wang.Unsupervised Salience Learning for Person Re-identification.In CVPR 2013. is based on without the prominent spy of supervision Levy the human bioequivalence of study, IEEE international computer vision and pattern-recognition meeting) according to the prominent weights of each piece obtained, During local matching, give the different contributions in identification of each localized mass according to prominent weights thus realize human body and know Not;Y.Zhang et al. (Y.Zhang and S.Li.Gabor-LBP based region covariance descriptor For person reidentification.Proc.Int.Conference on Image and Graphics, 2011. bases In the human bioequivalence of the Gabor-LBP that regional area covariance describes, image and figure meeting) carrying out human bioequivalence process In, LBP textural characteristics is combined with Gabor characteristic and seeks ground distance, preferably avoid illumination and postural change to people The impact of body identification;Malocal et al. (B.Ma, Y.Su, and F.Jurie.Local descriptors encoded by The human body of fisher vectors for person re-identification.2012. partial descriptions based on complement vector is known Complement vector) is not utilized to add up to encode higher local feature, so that human bioequivalence effect has had bigger improvement.These are without prison Educational inspector's learning method is all concentrated and is focused on characteristic Design and locally match, but is not counted from the abundant structural information in image Calculate, when running into the similar area of two different human body, it is difficult to small difference is made a distinction, as shown in Figure 1 b, without supervision The different people with similar area in Fig. 1 b, by accumulative local matching, is easily judged as same person by method.
Summary of the invention
The technical problem to be solved is to provide one and need not be marked image to be identified, can effectively keep away The base of the minute differences in exempting from shooting angle, posture and the impact of light change and effectively identifying the similar area of different human body Recognition method for target human body in space constraint.
The present invention solves the technical scheme that above-mentioned technical problem used: a kind of target body based on space constraint is known Other method, it is characterised in that: comprise the following steps:
1. suppose there is a camera A, one image object storehouse of all image sets synthesis that camera A is photographed, so Foreground area in each image in rear extraction image object storehouse, in image object storehouse, the foreground area in each image is figure As the human body in each image in object library, then the foreground area in each image in image object storehouse is divided into size phase With and the first image block of overlapping each other, then the foreground area extracted in image object storehouse in each image in each first figure Characteristic vector as block;
2. suppose there is a camera B, the image arrived by camera B captured in real-time, as image to be identified, then extracts Foreground area in image to be identified, the foreground area in image to be identified is the human body in image to be identified, then will treat Identify the second image block that the foreground area in image is divided into size identical and overlaps each other, then extract in image to be identified The characteristic vector of each second image block in foreground area;
3. according to the characteristic vector of each first image block in the foreground area in each image in image object storehouse, obtain The minimum range block sequence of each first image block in the foreground area taken in image object storehouse in each image, by image mesh In the foreground area in q width image in mark storehouse, central pixel point coordinate position in q width image is (i, the first figure j) As the minimum range block sequence of block is designated as Wherein, 1≤q≤Q, Q represent The quantity of the image in image object storehouse, (i j) represents the central pixel point of the first image block coordinate bit in q width image Put, For belonging to symbol, F represents the coordinate position of all pixels in the foreground area in q width image Set, total line number of the first image block that 1≤k≤M, M comprise in representing the foreground area in q width image,Min{} represents and takes minimum value function, 1≤j'≤ N', N' represent total number of the first image block comprised in row k the first image block in the foreground area in q width image,|| ||2Represent two normal form symbols,In representing in the foreground area in q width image Imago vegetarian refreshments coordinate position in q width image is (i, the first image block j)Characteristic vector,Represent q width figure In foreground area in Xiang, central pixel point coordinate position in q width image is first image block of (k, j')Feature Vector,
Then according to the characteristic vector of each second image block in the foreground area in image to be identified, obtain to be identified The minimum range block sequence of each second image block in the foreground area in image, by the foreground area in image to be identified Central pixel point coordinate position in image to be identified is that (m, the minimum range block sequence of the second image block n) is designated as Wherein, (m n) represents that the central pixel point of the second image block is to be identified Coordinate position in image,F' represents the coordinate bit of all pixels in the foreground area in image to be identified The set put, total line number of the second image block that 1≤k'≤K, K comprise in representing the foreground area in image to be identified,1≤n'≤L', L' represent in image to be identified Foreground area in kth ' total number of the second image block of comprising in row the second image block, Represent that central pixel point coordinate position in image to be identified is (m, second n) in the foreground area in image to be identified Image blockCharacteristic vector,In representing the foreground area in image to be identified, central pixel point is in image to be identified Coordinate position is second image block of (k', n')Characteristic vector,
4. use closest Node Algorithm, find out each second image block in the foreground area in image to be identified at figure As most like piece in the foreground area in each image in object library, forEach image in image object storehouse In foreground area in m-l walk to, in all first image blocks of m+l row, find outEvery in image object storehouse In foreground area in width image most like piece, it is assumed that in the foreground area in q width image in image object storehouse M-l walk to find out in all first image blocks of m+l row most like piece is in the q width image in image object storehouse In foreground area, in central pixel point q width image in image object storehouse, coordinate position is (m1,n1) the first image block, Then willThe m-l in the foreground area in q width image in image object storehouse walks to all first figures of m+l row As most like piece in block is designated asWherein, m-l≤m1≤ m+l, 1≤l≤m,As m-l < 1 and m+l≤K Time, m-l walks to that m+l row is actual to be taken the 1st and walk to m+l row;As m-l >=1 and m+l > K time, it is real that m-l walks to m+l row Border takes m-l and walks to line k;As m-l<1 and m+l>K time, m-l walks to that m+l row is actual to be taken the 1st and walk to line k;
Then according to the characteristic vector of each second image block in the foreground area in image to be identified and to be identified In foreground area in each second image block in foreground area in image each image in image object storehouse The characteristic vector of similar block, obtains each second image block in the foreground area in image to be identified in image object storehouse Matching score in each image, forWillThe matching score in q width image in image object storehouse is designated as Wherein, e represents nature radix,σ is normal Number, δ2It it is an expressionThe constant of frequency bandwidth,RepresentCharacteristic vector,RepresentCharacteristic vector;
5. according to minimum range block sequence and the image of all second image blocks in the foreground area in image to be identified The minimum range block sequence of all first image blocks in the foreground area in each image in object library, obtains figure to be identified All second image blocks in foreground area in Xiang are relative to the constraint of the space constraint of each image in image object storehouse Weights, forWillIt is designated as relative to the constraint weight of the space constraint of the q width image in image object storehouse Wherein, e represents nature radix,δ3It is one Individual expressionThe constant of frequency bandwidth,RepresentIn kth ' individual element,RepresentIn Kth ' individual element,RepresentIn image object storehouse most like piece in q width imageMinimum range block sequence Row, total line number of the second image block that 1≤k'≤K, K comprise in representing the foreground area in image to be identified;
6. according to the every width figure in image object storehouse of each second image block in the foreground area in image to be identified All second image blocks in matching score in Xiang and the foreground area in image to be identified are relative in image object storehouse The constraint weight of space constraint of each image, obtain image to be identified relative to each image in image object storehouse Join score, image to be identified is designated as relative to the matching score of q width image in image object storehouse Wherein, IARepresent image to be identified,Represent image Q width image in object library;
7. by each image in image object storehouse by image to be identified relative in image object storehouse each image Join score to arrange from big to small, obtain an image sequence, be in image sequence by the human bioequivalence in image to be identified Human body in one sub-picture.
Described step detailed process 1. is:
-1 1., suppose there is a camera A, one the image object storehouse of all image sets synthesis photographed by camera A;
-2 1., be present image by q width image definition currently pending in image object storehouse, wherein, 1≤q≤Q, Q The quantity of the image in expression image object storehouse;
-3 1., the V passage in the HSV passage of present image is carried out equalization processing, then use Attitude estimation to extract Foreground area in present image, the foreground area in present image is the human body in present image, then by present image Foreground area the first image block of being divided into multiple size identical and overlapping each other, the first currently pending image block is fixed Justice is current first image block;
-4 1., extract the LAB color characteristic of current first image block, then current first image block is evenly divided into many First elementary area lattice of individual non-overlapping copies, and according to all first elementary area lattice by current first image block partial gradient amount Turn to eight directions, further according to the SIFT feature of eight current first image blocks of directions extraction of current first image block, finally LAB color characteristic according to current first image block and the SIFT feature of current first image block, obtain current first image block Characteristic vector, be designated as cq,Wherein, aqIt is 288 dimensional vectors, aqThree face for current first image block After chrominance channel carries out three samplings respectively, then extract 32 dimension color histograms of each Color Channel of current first image block respectively The LAB color characteristic of current first image block got after figure, bqIt is 384 dimensional vectors, bqFor respectively current first Get after extracting 16 dimensional features on each direction of current first image block on three Color Channels of image block is current The SIFT feature of the first image block;
1.-5, using the first pending for next one image block as current first image block, it is then back to step and 1.-4 continues Continuous execution, until the characteristic vector of all first image blocks obtained in the foreground area in present image;
-6 1., make q=q+1, using next pending image in image object storehouse as present image, be then back to step Suddenly 1.-3 continue executing with, until having processed all images in image object storehouse.
1. foreground area in present image is divided into multiple size identical and overlapped in-3 by described step The process of the first image block is: move every 4 pixels in present image with the sliding window that size is 10 × 10, The first image block being divided into multiple size to be 10 × 10 present image.
Described step 1. in-4 the size of the first elementary area lattice be 4 × 4.
Described step detailed process 2. is:
-1 2., suppose there is a camera B, the image arrived by camera B captured in real-time is as image to be identified, the most right V passage in the HSV passage of image to be identified carries out equalization processing, then uses Attitude estimation to extract in image to be identified Foreground area, the foreground area in image to be identified is the human body in image to be identified, then by the foreground zone in present image The second image block that regional partition becomes size identical and overlaps each other, is defined as current second figure by the second currently processed image block As block;
-2 2., extract the LAB color characteristic of current second image block, then current second image block is evenly divided into many Second elementary area lattice of individual non-overlapping copies, and according to all of second elementary area lattice by current second image block partial gradient Be quantified as eight directions, further according to eight directions of current second image block extract current second image blocks SIFT feature, Further according to LAB color characteristic and the SIFT feature of current second image block of current second image block, obtain current second image The characteristic vector of block, is designated as c,Wherein, a is 288 dimensional vectors, and a is three passages of current second image block After carrying out three samplings respectively, then obtain after 32 dimension color histograms of each Color Channel extracting current second image block respectively The LAB color characteristic of the second image block got, b is 384 dimensional vectors, and the element in b is respectively at current second figure As get after extracting 16 dimensional features on each direction of current second image block on three Color Channels of block current The SIFT feature of two image blocks;
2.-3, using the second pending for next one image block as current second image block, it is then back to step and 2.-2 continues Continuous execution, until the characteristic vector of all second image blocks obtained in the foreground area in image to be identified.
2. foreground area in image to be identified is divided into multiple size identical and overlapped in-1 by described step The process of the second image block be: with sliding window that size is 10 × 10 in image to be identified every 4 pixels Mobile, the second image block being divided into multiple size to be 10 × 10 image to be identified.
The size of described step 2. the second elementary area lattice in-2 is 4 × 4.
Described step 4. in use closest Node Algorithm, find out each the in the foreground area in image to be identified During in two image blocks each image in image object storehouse most like piece in foreground area, forAt figure As, in all first image blocks of the m row in the foreground area in each image in object library, finding outAt image object In storehouse most like piece in the foreground area in each image, it is assumed that the prospect in q width image in image object storehouse Most like piece found out in all first image blocks of the m row in region be in the q width image in image object storehouse before In scene area, in central pixel point q width image in image object storehouse, coordinate position is (m, n1) the first image block, then WillMost like in all first image blocks of the m row in the foreground area in q width image in image object storehouse Block is designated as
Then according to the characteristic vector of each second image block in the foreground area in image to be identified and to be identified In foreground area in each second image block in foreground area in image each image in image object storehouse The characteristic vector of similar block, obtains each second image block in the foreground area in image to be identified in image object storehouse Matching score in each image, forWillThe matching score in q width image in image object storehouse is designated as Wherein, e represents nature radix,σ is constant, δ is an expressionThe constant of frequency bandwidth,RepresentCharacteristic vector,RepresentSpy Levy vector.
Described step is 5. middle willRelative to the constraint weight note of the space constraint of q width image in image object storehouse For Wherein, e represents nature radix,δ1It is one Individual expressionThe constant of frequency bandwidth,RepresentIn kth ' individual element,RepresentIn Kth ' individual element,RepresentIn image object storehouse most like piece in q width imageMinimum range block sequence Row, total line number of the second image block that 1≤k'≤K, K comprise in representing the foreground area in image to be identified.
Compared with prior art, it is an advantage of the current invention that: during carrying out target body identification, first extract and treat The foreground area of the image in identification image and image object storehouse, then splits the foreground area of the image in image object storehouse The sizes such as one-tenth and the first image block overlapped each other, by sizes such as the foreground area of image to be identified are divided into and overlap each other Second image block, extracts each first image block and the characteristic vector of each second image block, and finds each second image block In each image in image object storehouse most like piece, then extract each first image block and each second image block respectively Minimum range block sequence, be then calculated image to be identified relative to the matching score of the image in image object storehouse thus Carry out human bioequivalence;The minimum range block sequence extracting each first image block and each second image block makes in image to be identified Abundant structural information is dissolved in matching score, efficiently avoid shooting angle, posture and the impact of light change, energy Effectively identify the minute differences in the similar area of different human body, and need not figure to be identified during target body identification As being marked.
Accompanying drawing explanation
Fig. 1 a is from VIPeR storehouse and same person comparison diagram under different scenes in CUHK02 storehouse, wherein, Mei Yilie Two width images be same person;
Fig. 1 b is the comparison diagram from VIPeR storehouse from the different people in CUHK02 storehouse with similar area, wherein, each Two width images of row are similar two people;
Fig. 2 is the flow chart of the inventive method;
Fig. 3 a is the image to be identified that the inventive method is selected when being embodied as;
Fig. 3 b is the foreground area of image to be identified, and wherein, the region in rectangle frame is foreground area;
Fig. 3 c is the image in the image object storehouse that the inventive method is selected when being embodied as;
Fig. 3 d is the foreground area of the image in the image object storehouse that the inventive method is selected when being embodied as, wherein, square Region in shape frame is foreground area;
Fig. 4 a is the postural change impact on constraint weight in the inventive method, and wherein, first in the first row is secondary and the Three width images are same person, and first in the second row is secondary and the 3rd width image is different people, the grey in the second width image Region is background area, and non-gray area represents constraint weight, and color is more deeply felt and shown that constraint weight is the biggest, and white represents constraint power Value minimum;
Fig. 4 b is the impact after human body parts blocks in the inventive method on constraint weight, wherein, first in the first row Secondary and the 3rd width image is same person, and first in the second row is secondary and the 3rd width image is different people, in the second width image Gray area be background area, non-gray area represents constraint weight, and color is more deeply felt and shown that constraint weight is the biggest, white represent Constraint weight is minimum;
Fig. 4 c is the light change impact on constraint weight in the inventive method, and wherein, first in the first row is secondary and the Three width images are same person, and first in the second row is secondary and the 3rd width image is different people, the grey in the second width image Region is background area, and non-gray area represents constraint weight, and color is more deeply felt and shown that constraint weight is the biggest, and white represents constraint power Value minimum;
Fig. 5 be the inventive method with the experimental result comparison diagram of existing recognition method for target human body (use from Image in CUHK02 storehouse);
Fig. 6 is that the experimental result comparison diagram of the inventive method and existing recognition method for target human body (uses from VIPeR Image in storehouse).
Detailed description of the invention
Below in conjunction with accompanying drawing embodiment, the present invention is described in further detail.
The present invention proposes a kind of recognition method for target human body based on space constraint, the flow chart of the method such as Fig. 2 institute Showing, it comprises the following steps:
1. suppose there is a camera A, one image object storehouse of all image sets synthesis that camera A is photographed, so Foreground area in each image in rear extraction image object storehouse, in image object storehouse, the foreground area in each image is figure As the human body in each image in object library, then the foreground area in each image in image object storehouse is divided into size phase With and the first image block of overlapping each other, then the foreground area extracted in image object storehouse in each image in each first figure As the characteristic vector of block, detailed process is:
-1 1., suppose there is a camera A, one the image object storehouse of all image sets synthesis photographed by camera A.
-2 1., be present image by q width image definition currently pending in image object storehouse, wherein, 1≤q≤Q, Q The quantity of the image in expression image object storehouse, is used for contrasting with image to be identified by the image in image object storehouse, when Front image is as shown in Figure 3 c.
-3 1., in order to reduce the light impact on image, first the V passage in the HSV passage of present image is carried out all Weighing apparatusization processes, and then uses Attitude estimation to extract the foreground area (as shown in Figure 3 d) in present image.Again by present image Foreground area the first image block of being divided into multiple size identical and overlapping each other, the first currently pending image block is fixed Justice is current first image block, and the size of these the first image blocks is 10 × 10, and wherein the first image block in level and hangs down Nogata to step-length be 4 pixels, thus be divided into multiple size identical and phase mutual respect the foreground area in present image The first folded image block, its process is: with sliding window that size is 10 × 10 in present image every 4 pixels Mobile, the first image block being divided into multiple size to be 10 × 10 present image.
1.-4, the LAB color characteristic of current first image block is extracted, in order to preferably obtain present image profile and details Discriminant information, each Color Channel of current first image block is down-sampled through three times, and three down-sampled factors are respectively 0.5,0.75,1, then extract 32 dimension color histograms on each Color Channel of current first image block, get current 288 dimension color characteristics of the first image block.In order to combine with further feature, all of histogram is normalized.In order to reduce bat Take the photograph the impact on image recognition of angle and light, then it is special to extract SIFT (Scale-invariant feature transform) Levy one as color characteristic to supplement, in the extraction stage of SIFT feature, current first image block is evenly divided into multiple First elementary area lattice of non-overlapping copies, the size of these the first elementary area lattice is 4 × 4, comprises in first image block Having four the first elementary area lattice, these four the first elementary area cases are on four angles of the first image block, i.e. same It is separated by two pixels between adjacent two the first elementary area lattice in first image block, and according to all first elementary area lattice Current first image block partial gradient is quantified as eight directions, carries respectively in three Color Channels of current first image block Take the SIFT feature of 128 dimensions, form the SIFT feature of current first image block of 384 dimensions in conjunction with three Color Channels altogether, in order to Can be combined with the LAB color characteristic of current first image block, the SIFT feature of this current first image block is also carried out at normalization Reason.Current first figure is obtained further according to the LAB color characteristic of current first image block and the SIFT feature of current first image block As the characteristic vector of block, it is designated as cq,The characteristic vector of current first image block is with the characteristic vector table of one 672 dimension Show, wherein, aqIt is 288 dimensional vectors, aqIn the LAB color characteristic that element is current first image block extracted, bq It is 384 dimensional vectors, bqIn the SIFT feature that element is current first image block extracted.
1.-5, using the first pending for next one image block as current first image block, it is then back to step and 1.-4 continues Continuous execution, until the characteristic vector of all first image blocks obtained in the foreground area in present image.
-6 1., make q=q+1, using next pending image in image object storehouse as present image, be then back to step Suddenly 1.-3 continue executing with, until having processed all images in image object storehouse.
2. suppose there is a camera B, the image arrived by camera B captured in real-time is as image to be identified, such as Fig. 3 a institute Showing, then extracting the foreground area in image to be identified, the foreground area in image to be identified is the people in image to be identified Body, the second image block being then divided into size identical foreground area in image to be identified and overlapping each other, then extraction are treated The characteristic vector of each second image block in foreground area in identification image, detailed process is:
-1 2., suppose there is a camera B, the image arrived by camera B captured in real-time is as image to be identified, in order to subtract Few light impact on image, first carries out equalization processing to the V passage in the HSV passage of image to be identified, then uses Attitude estimation extracts the foreground area in image to be identified, and the foreground area in image to be identified is the people in image to be identified Body (as shown in Figure 3 b).The second image block being divided into size identical foreground area in present image again and to overlap each other, The second currently processed image block is defined as current second image block, and the size of these the second image blocks is 10 × 10, and this A little second image blocks step-length in the horizontal and vertical directions is 4 pixels, thus by the foreground area in image to be identified Being divided into the second image block that multiple size is identical and overlapped, its process is: be the sliding window of 10 × 10 with size Mouthful move every 4 pixels in image to be identified, that image to be identified is divided into multiple size be 10 × 10 Two image blocks.
2.-2, the LAB color characteristic of current second image block is extracted, in order to preferably obtain image outline to be identified with thin The discriminant information of joint, three Color Channels of current second image block are all down-sampled through three times, and three down-sampled factors are respectively It is 0.5,0.75,1, on each Color Channel, extract 32 dimension color histograms of current second image block, obtain current second figure The 288 dimension color characteristics as block.In order to combine with further feature, all of histogram is normalized.In order to reduce shooting angle With the light impact on image recognition, extract SIFT feature and supplement as one of color characteristic, on the extraction rank of SIFT feature Section, is evenly divided into the second elementary area lattice of multiple non-overlapping copies, these the second elementary area lattice by current second image block Size be 4 × 4, second image block includes four the second elementary area lattice, these four the second elementary area cases On four angles of the second image block, i.e. it is separated by between adjacent two the second elementary area lattice in same second image block Two pixels, and the second image block partial gradient is quantified as eight directions, currently according to all of second elementary area lattice Three Color Channels of the second image block extract the SIFT feature of 128 dimensions respectively, forms 384 dimensions altogether in conjunction with three Color Channels The SIFT feature of current second image block, in order to enable to be combined with the LAB color characteristic of current second image block, current second figure As the SIFT feature of block is also carried out normalized.LAB color characteristic and current second figure further according to current second image block As the SIFT feature of block obtains the characteristic vector of current second image block, it is designated as c,The feature of current second image block Vector represents with the characteristic vector of one 672 dimension, and wherein, a is 288 dimensional vectors, and the element in a is extract current The LAB color characteristic of the second image block, b is 384 dimensional vectors, and the element in b is current second image block extracted SIFT feature.
-3 2., the next one second image block of current second image block is defined as current second image block, returns step 2.-2 continue executing with, until the characteristic vector of all second image blocks obtained in image to be identified.
3. in order to vertical direction have preferably resist partial occlusion, posture, light, the change of clothes wrinkle and affect about Bundle, one nearest Euclidean distance block of every line search in the vertical direction in images themselves, so according to width every in image object storehouse The characteristic vector of each first image block in the foreground area in image, the prospect in each image in acquisition image object storehouse The minimum range block sequence of each first image block in region, by the foreground area in the q width image in image object storehouse Interior central pixel point coordinate position in q width image is that (i, the minimum range block sequence of the first image block j) is designated as Wherein, 1≤q≤Q, Q represent the quantity of the image in image object storehouse, (i, j) table Show the central pixel point of the first image block coordinate position in q width image, For belonging to symbol, F represents The set of the coordinate position of all pixels in foreground area in q width image, 1≤k≤M, M represent the prospect in q width image Total line number of the first image block comprised in region, Min{} represents and takes minimum value function, and 1≤j'≤N', N' represent row k the first image block in the foreground area in q width image In total number of the first image block of comprising,|| ||2Represent two normal form symbols,Represent In foreground area in q width image, central pixel point coordinate position in q width image is (i, the first image block j) Characteristic vector,Represent in the foreground area in q width image central pixel point in q width image coordinate position for (k, J') the first image blockCharacteristic vector,
With the minimum range block sequence in the image in image object storehouse being each first image block in foreground area Similar, according to the characteristic vector of each second image block in the foreground area in image to be identified, obtain figure to be identified The minimum range block sequence of each second image block in the foreground area in Xiang, in the foreground area in image to be identified Imago vegetarian refreshments coordinate position in image to be identified is that (m, the minimum range block sequence of the second image block n) is designated as Wherein, (m n) represents that the central pixel point of the second image block is to be identified Coordinate position in image,F' represents the coordinate bit of all pixels in the foreground area in image to be identified The set put, total line number of the second image block that 1≤k'≤K, K comprise in representing the foreground area in image to be identified,1≤n'≤L', L' represent in image to be identified Foreground area in kth ' total number of the second image block of comprising in row the second image block, Represent that central pixel point coordinate position in image to be identified is (m, second n) in the foreground area in image to be identified Image blockCharacteristic vector,In representing the foreground area in image to be identified, central pixel point is sat in image to be identified Mark is set to second image block of (k', n')Characteristic vector,
The calculating of the constraint weight of the inventive method is all most like by finding in corresponding region with the coupling of block Block, therefore, it is possible to keep out the impact that weights are retrained by the factor such as light, posture very well.As shown in Fig. 4 a, Fig. 4 b and Fig. 4 c, each Two different people in group have most of feature almost identical, but from the same person under different cameras overall structure more The most similar, by space constraint suppression different people because of the similar but block that each overall structure differs greatly of regional area Join.
4. the data in view of the inventive method are all from human detection, and the bounding box that human detection obtains can be in human body district There is certain float in space in territory, it is impossible to accurate alignment, in order to preferably process the impact of spatial variations, finding each second During most like piece of image block, not in strict accordance with the identical line search in the image in image object storehouse, but Allow there is less fluctuation range in vertical direction.The m-in q width image in the present embodiment, in image object storehouse L walks to find the second image block of m row the n-th row in image to be identified at image mesh in the image block in m+l line range In mark storehouse most like piece in q width image, wherein, 1≤l≤m, when l arranges too small, owing to vertical direction can not the most not Alignment, the second image block cannot search most like piece, and when l arranges excessive, the second image block of a upper body is likely searched for To the second image block of the lower part of the body most like piece, it is contemplated that these, specific implementation process takes l=2.
Use closest Node Algorithm, find out each second image block in the foreground area in image to be identified at image In object library most like piece in the foreground area in each image, forIn each image in image object storehouse Foreground area in m-l walk to, in all first image blocks of m+l row, find outEvery width in image object storehouse In foreground area in image most like piece, it is assumed that in the foreground area in q width image in image object storehouse M-l walk to find out in all first image blocks of m+l row most like piece be in the q width image in image object storehouse before In scene area, in central pixel point q width image in image object storehouse, coordinate position is (m1,n1) the first image block, then WillThe m-l in the foreground area in q width image in image object storehouse walks to all first images of m+l row Most like piece in block is designated asWherein, m-l≤m1≤ m+l, 1≤l≤m,As m-l < 1 and m+l≤K, M-l walks to that m+l row is actual to be taken the 1st and walk to m+l row;As m-l >=1 and m+l > K time, m-l walks to that m+l row is actual to be taken M-l walks to line k;As m-l<1 and m+l>K time, m-l walks to that m+l row is actual to be taken the 1st and walk to line k.
Then according to the characteristic vector of each second image block in the foreground area in image to be identified and to be identified In foreground area in each second image block in foreground area in image each image in image object storehouse The characteristic vector of similar block, obtains each second image block in the foreground area in image to be identified in image object storehouse Matching score in each image, forWillThe matching score in q width image in image object storehouse is designated as Wherein, e represents nature radix,σ is normal Number, δ2It it is an expressionThe constant of frequency bandwidth, specific implementation process takes σ=1, takes δ2= 2.8,RepresentCharacteristic vector,RepresentCharacteristic vector.
5. according to minimum range block sequence and the image of all second image blocks in the foreground area in image to be identified The minimum range block sequence of all first image blocks in the foreground area in each image in object library, obtains figure to be identified All second image blocks in foreground area in Xiang are relative to the constraint of the space constraint of each image in image object storehouse Weights, forWillIt is designated as relative to the constraint weight of the space constraint of the q width image in image object storehouse Constraint weight is the biggest, represents the complete of second image block image in image object storehouse Office's structure is the most similar, is that the possibility of same person is the highest.Wherein, e represents nature radix, δ3It it is an expressionThe constant of frequency bandwidth, specific implementation process takes δ3=2.8,Represent In kth ' individual element,RepresentIn kth ' individual element,RepresentQ width figure in image object storehouse In Xiang most like pieceMinimum range block sequence, 1≤k'≤K, K comprise in representing the foreground area in image to be identified Total line number of the second image block.
The characteristic vector of each image block extracted in image object storehouse in each image and extracting in image to be identified The minimum range block sequence of each second image block is that image has been carried out space constraint, and this space constraint limits local matching Defect, it is possible to obtain constraint weight according to this space constraint so that each image block and each second image block were mating With the constraint information of the overall situation in journey.
6. according to the every width figure in image object storehouse of each second image block in the foreground area in image to be identified All second image blocks in matching score in Xiang and the foreground area in image to be identified are relative in image object storehouse The constraint weight of space constraint of each image, obtain image to be identified relative to each image in image object storehouse Join score, image to be identified is designated as relative to the matching score of q width image in image object storehouse Value the biggest, represent in two width figures People be more likely same person, IARepresent image to be identified,Represent the q width image in image object storehouse.
7. each image in image object storehouse is pressed image to be identified relative to the coupling of each image in image object storehouse Score arranges from big to small, obtains an image sequence, is first in image sequence by the human bioequivalence in image to be identified Human body in sub-picture.
In the present embodiment, step 4. in find out the phase of each second image block in the foreground area in image to be identified Like in the detailed process of block, if in strict accordance with the identical line search in the image in image object storehouse, adopting in this manner Use closest Node Algorithm, find out each second image block in the foreground area in image to be identified in image object storehouse In foreground area in each image most like piece, forThe foreground area in each image in image object storehouse In all first image blocks of interior m row, find outIn the foreground area in each image in image object storehouse Similar block, it is assumed that look in all first image blocks of the m row in the foreground area in q width image in image object storehouse Most like piece gone out be in the foreground area in the q width image in image object storehouse central pixel point in image object storehouse In q width image, coordinate position is (m, n1) the first image block, then willIn q width image in image object storehouse Most like piece in all first image blocks of the m row in foreground area is designated as
Then according to the characteristic vector of each second image block in the foreground area in image to be identified and to be identified In foreground area in each second image block in foreground area in image each image in image object storehouse The characteristic vector of similar block, obtains each second image block in the foreground area in image to be identified in image object storehouse Matching score in each image, forWillThe matching score in q width image in image object storehouse is designated as Wherein, e represents nature radix,σ is constant, δ is an expressionThe constant of frequency bandwidth, specific implementation process takes σ=1, takes δ=2.8, RepresentCharacteristic vector,RepresentCharacteristic vector.
According to the identical line search in the image in image object storehouse, by step 5. inRelative to image object storehouse The constraint weight of the space constraint of interior q width image is designated as Wherein, e represents polynomial basis Number,δ1It it is an expressionThe constant of frequency bandwidth, be embodied as During take δ=2.8,RepresentIn kth ' individual element,RepresentIn kth ' individual element,RepresentIn image object storehouse most like piece in q width imageMinimum range block sequence, 1≤k'≤K, K represent and treat Total line number of the second image block comprised in identifying the foreground area in image.
According to the identical line search in the image in image object storehouse, by step 6. inIt is designated asWherein, IARepresent image to be identified,Represent image Q width image in object library.This mode according to the identical line search in the image in image object storehouse, it is impossible to more preferably Ground processes the impact of spatial variations, therefore the inventive method uses the searcher allowing to have less fluctuation range in vertical direction Formula finds most like piece of each second image block in the foreground area in image to be identified.
In order to the remarkable effect of the global restriction of the inventive method is better described, the present invention utilize VIPeR database and Image in CHUK02 database the two database, tests the inventive method, then by the inventive method with existing Human body recognition method carries out the contrast of experimental result, and the inventive method randomly selects from VIPeR storehouse (having 613 pedestrians) 316 pedestrians, as collection to be tested, randomly select 486 pedestrians as to be tested from CHUK02 storehouse (having 971 pedestrians) Collection carries out contrast experiment respectively, and as shown in Figure 5 and Figure 6, the correct matching ratio in Fig. 5 and Fig. 6 represents ranking to comparing result (Rank) ratio that in front n image, image correctly identifies.Such as, in Fig. 5, coordinate position is that (10,52) represent in CUHK02 storehouse 316 images to be identified and image object storehouse in all image the inventive method carry out target body identification experiment, figure After all images in picture object library are according to matching score ranking, using ranking image in the image object storehouse of front 10 as treating Identify the coupling image of image, 316 images to be identified have 52% can be correctly validated.In Fig. 6, coordinate position is (5,47) Represent that 485 images to be identified in VIPeR storehouse and all image the inventive method in image object storehouse carry out target person Body identification is tested, after all images in image object storehouse are according to matching score ranking, by ranking in the image object storehouse of front 5 Image as the coupling image of image to be identified, 485 images to be identified have 46% can be correctly validated.Fig. 5 and Fig. 6 In, Our is the experimental result of the inventive method, SDALF be M.Farenzena et al. (M.Farenzena, L.Bazzani, A.Perina,V.Murino,and M.Cristani.Person re-identification by symmetry-driven Accumulation of local features.In CVPR, 2010. human bioequivalence added up based on symmetry local feature, IEEE international computer vision and pattern-recognition meeting) experimental result of method that proposes, ELF be Malocal et al. (B.Ma, Y.Su,and F.Jurie.Local descriptors encoded by fisher vectors for person re- Identification.2012. the human bioequivalence of partial descriptions based on complement vector) experimental result of method that proposes, bLDFV It is Gray et al. (D.Gray and H.Tao.Viewpoint invariant pedestrian recognition with An ensemble of localized features.ECCV, 2008. combine the people of the angle invariability of multiple local feature Body identification, European Computer vision international conference) experimental result of method that proposes.From the experimental result shown in Fig. 5 and Fig. 6 Can be seen that the global restriction that the inventive method proposes serves obvious action in target body identification.

Claims (9)

1. a recognition method for target human body based on space constraint, it is characterised in that: comprise the following steps:
1. suppose there is a camera A, one image object storehouse of all image sets synthesis that camera A is photographed, then carry Taking the foreground area in each image in image object storehouse, in image object storehouse, the foreground area in each image is image mesh Human body in each image in mark storehouse, be then divided into size identical foreground area in each image in image object storehouse and Each first image block in the first image block overlapped each other, then the foreground area extracted in image object storehouse in each image Characteristic vector;
2. suppose there is a camera B, the image arrived by camera B captured in real-time, as image to be identified, then extracts and waits to know Foreground area in other image, the foreground area in image to be identified is the human body in image to be identified, then by be identified The second image block that foreground area in image is divided into size identical and overlaps each other, then extract the prospect in image to be identified The characteristic vector of each second image block in region;
3. according to the characteristic vector of each first image block in the foreground area in each image in image object storehouse, figure is obtained As the minimum range block sequence of each first image block in the foreground area in each image in object library, by image object storehouse In q width image in foreground area in central pixel point coordinate position in q width image be (i, the first image block j) Minimum range block sequence be designated as Wherein, 1≤q≤Q, Q represent image The quantity of the image in object library, (i, j) represents the central pixel point of the first image block coordinate position in q width image, For belonging to symbol, F represents the coordinate position of all pixels in the foreground area in q width image Set, total line number of the first image block that 1≤k≤M, M comprise in representing the foreground area in q width image,Min{} represents and takes minimum value function, 1≤j'≤ N', N' represent total number of the first image block comprised in row k the first image block in the foreground area in q width image,|| ||2Represent two normal form symbols,In representing in the foreground area in q width image Imago vegetarian refreshments coordinate position in q width image is (i, the first image block j)Characteristic vector,Represent q width figure In foreground area in Xiang, central pixel point coordinate position in q width image is first image block of (k, j')Feature Vector,
Then according to the characteristic vector of each second image block in the foreground area in image to be identified, image to be identified is obtained In foreground area in the minimum range block sequence of each second image block, by center in the foreground area in image to be identified Pixel coordinate position in image to be identified is that (m, the minimum range block sequence of the second image block n) is designated asWherein, (m n) represents that the central pixel point of the second image block exists Coordinate position in image to be identified,F' represents all pixels in the foreground area in image to be identified The set of coordinate position, the head office of the second image block that 1≤k'≤K, K comprise in representing the foreground area in image to be identified Number,1≤n'≤L', L' represent image to be identified In foreground area in kth ' total number of the second image block of comprising in row the second image block, Represent that central pixel point coordinate position in image to be identified is (m, second n) in the foreground area in image to be identified Image blockCharacteristic vector,In representing the foreground area in image to be identified, central pixel point is in image to be identified Coordinate position is second image block of (k', n')Characteristic vector,
4. use closest Node Algorithm, find out each second image block in the foreground area in image to be identified at image mesh In mark storehouse most like piece in the foreground area in each image, forIn each image in image object storehouse M-l in foreground area walks to, in all first image blocks of m+l row, find outEvery width figure in image object storehouse In foreground area in Xiang most like piece, it is assumed that the m-l in the foreground area in q width image in image object storehouse Walk to find out in all first image blocks of m+l row most like piece is the prospect in the q width image in image object storehouse In region, in central pixel point q width image in image object storehouse, coordinate position is (m1,n1) the first image block, then willThe m-l in the foreground area in q width image in image object storehouse walks to all first image blocks of m+l row In most like piece be designated asWherein, m-l≤m1≤ m+l, 1≤l≤m,As m-l < 1 and m+l≤K, the M-l walks to that m+l row is actual to be taken the 1st and walk to m+l row;As m-l >=1 and m+l > K time, m-l walks to that m+l row is actual takes M-l walks to line k;As m-l<1 and m+l>K time, m-l walks to that m+l row is actual to be taken the 1st and walk to line k;
Then according to characteristic vector and the image to be identified of each second image block in the foreground area in image to be identified In foreground area in each second image block each image in image object storehouse in foreground area in most like The characteristic vector of block, obtains the every width in image object storehouse of each second image block in the foreground area in image to be identified Matching score in image, forWillThe matching score in q width image in image object storehouse is designated asWherein, e represents nature radix,σ is normal Number, δ2It it is an expressionThe constant of frequency bandwidth,RepresentCharacteristic vector,RepresentCharacteristic vector;
5. according to minimum range block sequence and the image object of all second image blocks in the foreground area in image to be identified The minimum range block sequence of all first image blocks in the foreground area in each image in storehouse, obtains in image to be identified Foreground area in all second image blocks relative to the constraint weight of the space constraint of each image in image object storehouse, ForWillIt is designated as relative to the constraint weight of the space constraint of the q width image in image object storehouseWherein, e represents nature radix,δ3It is one Individual expressionThe constant of frequency bandwidth,RepresentIn kth ' individual element,RepresentIn Kth ' individual element,RepresentIn image object storehouse most like piece in q width imageMinimum range block Sequence, total line number of the second image block that 1≤k'≤K, K comprise in representing the foreground area in image to be identified;
6. according in each image in image object storehouse of each second image block in the foreground area in image to be identified Matching score and image to be identified in foreground area in every relative in image object storehouse of all second image blocks The constraint weight of the space constraint of width image, obtains image to be identified mating relative to each image in image object storehouse Point, image to be identified is designated as relative to the matching score of q width image in image object storehouse Wherein, IARepresent image to be identified,Represent image Q width image in object library;
7. by each image in image object storehouse by image to be identified relative to the mating of each image in image object storehouse Divide and arrange from big to small, obtain an image sequence, be that first in image sequence is secondary by the human bioequivalence in image to be identified Human body in image.
A kind of recognition method for target human body based on space constraint the most according to claim 1, it is characterised in that: described Step detailed process 1. is:
-1 1., suppose there is a camera A, one the image object storehouse of all image sets synthesis photographed by camera A;
-2 1., be present image by q width image definition currently pending in image object storehouse, wherein, 1≤q≤Q, Q represent The quantity of the image in image object storehouse;
-3 1., the V passage in the HSV passage of present image is carried out equalization processing, then use Attitude estimation to extract current Foreground area in image, the foreground area in present image is the human body in present image, then by before in present image The first image block that scene area is divided into multiple size identical and overlaps each other, is defined as the first currently pending image block Current first image block;
-4 1., extract the LAB color characteristic of current first image block, then current first image block is evenly divided into multiple mutually Nonoverlapping first elementary area lattice, and according to all first elementary area lattice, current first image block partial gradient is quantified as Eight directions, extract the SIFT feature of current first image blocks further according to eight directions of current first image block, finally according to The LAB color characteristic of current first image block and the SIFT feature of current first image block, obtain the spy of current first image block Levy vector, be designated as cq,Wherein, aqIt is 288 dimensional vectors, aqThree colors for current first image block are led to After road carries out three samplings respectively, then after 32 dimension color histograms of each Color Channel extracting current first image block respectively The LAB color characteristic of current first image block got, bqIt is 384 dimensional vectors, bqFor respectively at current first image Current first got after extracting 16 dimensional features on each direction of current first image block on three Color Channels of block The SIFT feature of image block;
1.-5, using the first pending for next one image block as current first image block, it is then back to step and 1.-4 continues to hold OK, until the characteristic vector of all first image blocks obtained in the foreground area in present image;
-6 1., make q=q+1, next pending image in image object storehouse, as present image, is then back to step 1.-3 continue executing with, until having processed all images in image object storehouse.
A kind of recognition method for target human body based on space constraint the most according to claim 2, it is characterised in that: described 1. foreground area in present image is divided into the mistake of identical and overlapped the first image block of multiple size in-3 by step Cheng Wei: move every 4 pixels in present image with the sliding window that size is 10 × 10, splits present image The first image block becoming multiple size to be 10 × 10.
A kind of recognition method for target human body based on space constraint the most according to claim 3, it is characterised in that: described Step 1. in-4 the size of the first elementary area lattice be 4 × 4.
A kind of recognition method for target human body based on space constraint the most according to claim 4, it is characterised in that: described Step detailed process 2. is:
-1 2., suppose there is a camera B, the image arrived by camera B captured in real-time, as image to be identified, then treats knowledge V passage in the HSV passage of other image carries out equalization processing, then uses Attitude estimation to extract the prospect in image to be identified Region, the foreground area in image to be identified is the human body in image to be identified, then the foreground area in present image is divided It is slit into the second image block that size is identical and overlaps each other, the second currently processed image block is defined as current second image Block;
-2 2., extract the LAB color characteristic of current second image block, then current second image block is evenly divided into multiple mutually Nonoverlapping second elementary area lattice, and according to all of second elementary area lattice, current second image block partial gradient is quantified Be eight directions, further according to eight directions of current second image block extract current second image blocks SIFT feature, then root According to LAB color characteristic and the SIFT feature of current second image block of current second image block, obtain current second image block Characteristic vector, is designated as c,Wherein, a is 288 dimensional vectors, and a is three passages difference of current second image block After carrying out three samplings, then get after 32 dimension color histograms of each Color Channel extracting current second image block respectively The LAB color characteristic of the second image block, b is 384 dimensional vectors, and the element in b is respectively at current second image block Three Color Channels on extract 16 dimensional features on each direction of current second image block after current second figure that gets SIFT feature as block;
2.-3, using the second pending for next one image block as current second image block, it is then back to step and 2.-2 continues to hold OK, until the characteristic vector of all second image blocks obtained in the foreground area in image to be identified.
A kind of recognition method for target human body based on space constraint the most according to claim 5, it is characterised in that: described 2. foreground area in image to be identified is divided into identical and overlapped the second image block of multiple size in-1 by step Process is: move every 4 pixels in image to be identified, by figure to be identified with the sliding window that size is 10 × 10 As the second image block being divided into multiple size to be 10 × 10.
A kind of recognition method for target human body based on space constraint the most according to claim 6, it is characterised in that: described The size of step 2. the second elementary area lattice in-2 is 4 × 4.
A kind of recognition method for target human body based on space constraint the most according to claim 7, it is characterised in that: described Step is 4. middle uses closest Node Algorithm, finds out each second image block in the foreground area in image to be identified at image During in object library most like piece in the foreground area in each image, forEvery in image object storehouse In all first image blocks of the m row in foreground area in width image, find outEach image in image object storehouse In foreground area in most like piece, it is assumed that the m row in the foreground area in q width image in image object storehouse Most like piece found out in all first image blocks is central pixel point in the foreground area in the q width image in image object storehouse In q width image in image object storehouse, coordinate position is (m, n1) the first image block, then willIn image object storehouse Most like piece in all first image blocks of the m row in foreground area in q width image is designated as
Then according to characteristic vector and the image to be identified of each second image block in the foreground area in image to be identified In foreground area in each second image block each image in image object storehouse in foreground area in most like The characteristic vector of block, obtains the every width in image object storehouse of each second image block in the foreground area in image to be identified Matching score in image, forWillThe matching score in q width image in image object storehouse is designated asWherein, e represents nature radix,σ is normal Number, δ is an expressionThe constant of frequency bandwidth,RepresentCharacteristic vector,Represent Characteristic vector.
A kind of recognition method for target human body based on space constraint the most according to claim 8, it is characterised in that: described Step is 5. middle willIt is designated as relative to the constraint weight of the space constraint of q width image in image object storehouseWherein, e represents nature radix,δ1It is one Individual expressionThe constant of frequency bandwidth,RepresentIn kth ' individual element,RepresentIn Kth ' individual element,RepresentIn image object storehouse most like piece in q width imageMinimum range block sequence Row, total line number of the second image block that 1≤k'≤K, K comprise in representing the foreground area in image to be identified.
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