CN106841673A - A kind of river surface mean flow rate measurement apparatus and method - Google Patents

A kind of river surface mean flow rate measurement apparatus and method Download PDF

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Publication number
CN106841673A
CN106841673A CN201710030722.5A CN201710030722A CN106841673A CN 106841673 A CN106841673 A CN 106841673A CN 201710030722 A CN201710030722 A CN 201710030722A CN 106841673 A CN106841673 A CN 106841673A
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motion
current time
river surface
certain hour
flow rate
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冯全
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Gansu Agricultural University
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Gansu Agricultural University
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    • GPHYSICS
    • G01MEASURING; TESTING
    • G01PMEASURING LINEAR OR ANGULAR SPEED, ACCELERATION, DECELERATION, OR SHOCK; INDICATING PRESENCE, ABSENCE, OR DIRECTION, OF MOVEMENT
    • G01P5/00Measuring speed of fluids, e.g. of air stream; Measuring speed of bodies relative to fluids, e.g. of ship, of aircraft
    • G01P5/18Measuring speed of fluids, e.g. of air stream; Measuring speed of bodies relative to fluids, e.g. of ship, of aircraft by measuring the time taken to traverse a fixed distance

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  • Aviation & Aerospace Engineering (AREA)
  • Physics & Mathematics (AREA)
  • General Physics & Mathematics (AREA)
  • Image Analysis (AREA)

Abstract

The present invention provides a kind of method and system of the mean flow rate for measuring river surface, and methods described includes:River surface image based on current time and previous moment, obtains the motion conspicuousness point or motion salient region of the river surface image at current time;Motion conspicuousness point or motion salient region based on each moment in certain hour, obtain the average displacement in certain hour;And based on than the average displacement and inter frame temporal in chi calibration coefficient, the certain hour, obtain the mean flow rate in certain hour.The present invention need not throw buoy, and sustainable flow-speed measurement flow velocity in the water surface.

Description

A kind of river surface mean flow rate measurement apparatus and method
Technical field
The present invention relates to image processing field, more particularly, to river surface mean flow rate measurement apparatus and method.
Background technology
The river of China is numerous, for the comprehensive utilization in river, always in occupation of China's national economy and social development Critical role.Hydrologic monitoring information plays an important roll to preventing treatment flood and bloods and droughts and Water Resource Adjustment And Control.And flow Speed measurement is one of important process of hydrologic monitoring, but current flow-speed measurement method aspect has certain limitation. Conventional river flow velocity measuring method is broadly divided into 3 classes.
The first kind is traditional current meter mensuration, and its cardinal principle is to drive rotation oar to rotate by current, record rotation oar Rotating speed, flow velocity can be calculated by certain mapping relations, but is existed and worked as water quality mutation, and silt content becomes big time error and can become big, And water float thing can influence its result even to damage the problem of rotating plasma.
Equations of The Second Kind is to measure flow velocity by acoustical Doppler effect, is mainly used in surveying vessel, there is also equipment and people Class input ratio is larger, cost problem higher.
3rd class is the water flow speed measurement method combined with float technique based on Video processing, the movement locus of buoy in frequency Water velocity is calculated with reference to camera calibration.
Two examples of the 3rd class method are:(1) patent of invention " large-range surface flow rate image processing system long and its Synchronous real-time measurement method " (application number CN1289037A, 2000), (2) " river flow velocity monitoring system based on Video processing Design " (Han Yuwan, Institutes Of Technology Of Taiyuan's Master's thesis, 2010).Two examples have used float technique with image procossing phase With reference to scheme, need when in use put into buoy, then in video tracking buoy or trace particle motion.The two examples In son, the following principle of use is all based on buoy has significantly different with the water surface in color, and with the water surface as background, buoy is tracking Target.But the method is needed to buoy is thrown in camera field of view, after buoy drifts out the visual field of video camera, just cannot detection stream Speed, it is impossible to realize the uninterrupted real-time measurement to water velocity;The throwing of buoy simultaneously and recovery are also pretty troublesome thing.
The content of the invention
The present invention provides a kind of river surface mean flow for overcoming above mentioned problem or solving the above problems at least in part Speed measuring device and method.
According to an aspect of the present invention, there is provided it is a kind of measure river surface mean flow rate method, including:
S1, the river surface image based on current time and previous moment, obtain the river surface image at current time Motion conspicuousness point or motion salient region;
S2, the motion conspicuousness point based on each moment in certain hour or motion salient region, obtain certain hour Interior average displacement;And
S3, based on than the average displacement and inter frame temporal in chi calibration coefficient, the certain hour, obtain certain hour Interior mean flow rate.
According to another aspect of the present invention, a kind of system for measuring river surface mean flow rate is also provided, including:
Motion conspicuousness detection means, for the river surface image based on current time and previous moment, obtains current The motion conspicuousness point or motion salient region of the river surface image at moment;
Average displacement detection means, was connected, based on each moment in certain hour with the motion conspicuousness detection means Motion conspicuousness point or motion salient region, obtain certain hour in average displacement;And
Mean flow rate detection means, is connected with the average displacement detection means, and the mean flow rate detection means is used for Based on average displacement and inter frame temporal than each moment in chi calibration coefficient and certain hour, obtain flat in certain hour Equal flow velocity.
The application obtains river video, the analysis wherein feature with notable motility by perpendicular to the camera of the water surface Figure, extracts motion salient region therein or motion conspicuousness point, tracks each motion salient region or motion conspicuousness The corresponding displacement of point, simultaneous image coordinate system and calculates with the position mapping relations and inter frame temporal of realistic space coordinate system River surface actual flow velocity.The application need not throw buoy in the water surface, but itself can be produced using during river flow Fluctuation textural characteristics or natural floating object come flow-speed measurement flow velocity that measure river surface mean flow rate and sustainable.
Brief description of the drawings
Fig. 1 is a kind of method flow diagram of the mean flow rate of the measurement river surface according to the embodiment of the present invention;
Fig. 2 is the histogram of the method for the mean flow rate of the measurement river surface according to the embodiment of the present invention;
Fig. 3 is the structured flowchart of the system of the measurement river surface mean flow rate according to the embodiment of the present invention.
Specific embodiment
With reference to the accompanying drawings and examples, specific embodiment of the invention is described in further detail.Hereinafter implement Example is not limited to the scope of the present invention for illustrating the present invention.
Buoy is thrown on the water surface in order to overcome need in the prior art, it is caused video camera is drifted out when buoy visual field after The problem of flow velocity cannot be detected, and is thrown and is reclaimed troublesome problem, river flow process is utilized the invention provides one kind In fluctuation textural characteristics itself that produce or nature floating object come flow-speed measurement that measure river surface mean flow rate and sustainable The method of flow velocity.
Fig. 1 shows a kind of method flow diagram of the mean flow rate of measurement river surface according to embodiments of the present invention, bag Include:
S1, the river surface image based on current time and previous moment, obtain the river surface image at current time Motion conspicuousness point or motion salient region;
S2, the motion conspicuousness point based on each moment in certain hour or motion salient region, obtain certain hour Interior average displacement;And
S3, based on than the average displacement and inter frame temporal in chi calibration coefficient, the certain hour, obtain certain hour Interior mean flow rate.
The present invention obtains river video (sequence image) by perpendicular to the camera of the water surface, and analysis wherein has significantly fortune The characteristic pattern of dynamic property, extracts motion significant characteristics point therein, tracks the corresponding pixel position of each motion significant characteristics point Move, simultaneous image coordinate system and calculate river surface reality with the position mapping relations and inter frame temporal of realistic space coordinate system Border flow velocity.
In one embodiment, the invention provides a kind of method for obtaining average displacement based on motion salient region, Wherein, the step S1 includes:
S1.1, the river surface image P based on ttWith the river surface image P at t-1 momentt-1Frame it is poor, obtain t The motion significant characteristics figure x at momentt.Similarly, the river surface image P based on the t+1 momentt+1With the river surface figure of t As Pt, obtain the motion significant characteristics figure x at t+1 momentt+1
Frame is poor, also referred to as inter-frame difference, be it is a kind of by adjacent two frame in sequence of video images made calculus of differences come The method for obtaining moving target profile, it can be perfectly suitable for the situation that there are multiple moving targets and video camera movement. When occurring abnormal object of which movement in monitoring scene, more obvious difference occurs between frame and frame, two frames subtract each other, and obtain two The absolute value of two field picture luminance difference, judges whether it analyzes the kinetic characteristic of video or image sequence more than threshold value, it is determined that figure As whetheing there is object of which movement in sequence.
S1.2, the motion significant characteristics figure based on the current time, obtain the river surface image at current time Motion salient region.
In one embodiment, the step S1.2 includes:
S1.2.1, the motion significant characteristics figure binaryzation by t, obtain binary map.The binaryzation of image, being exactly will The gray value of the pixel on image is set to 0 or 255, that is, whole image is showed into significantly only black and white regarding Feel effect.Most common method is exactly to set a threshold value T, and the data of image are divided into two parts with T:Pixel group more than T With the pixel group less than T.
S1.2.2, in the binary map choose Nt,1Individual connected domain, any one of connected domain is that length or width are The rectangle of 20-100 pixels.The most important method of binary image analysis is exactly connected component labeling, and it is all bianry images The basis of analysis, it allows each single connected region to form one by the mark to white pixel in bianry image (target) Individual identified block, as connected domain.
S1.2.3, using the connected domain as masking-out, masking-out is exactly to select the outside of frame (inside for selecting frame is exactly constituency), is looked into Look for the position of the correspondence connected domain in the motion significant characteristics figure of t, as the motion salient region, these fortune The set of dynamic salient region is designated as { ft,i(i=1,2 ..., Nt,1| t=1,2 ...).
In one embodiment, the threshold value of the binaryzation is the gray scale maximum of the motion significant characteristics figure 0.9 times.
In one embodiment, the step S2 includes:
S2.1, in the significant characteristics figure of t search with the t-1 moment each move salient region match With region;
S2.2, the calculating matching area are in the relative displacement in significant characteristics figure is moved of t-1 moment to t;With And
S2.3, the relative displacement based on corresponding matching area of each moment in certain hour, obtain the straight of relative displacement Fang Tu, to the average value of the value in a range of region near peak value in the histogram and peak value, as described one timing Interior average displacement.
For a template ft,iIf, can be in motion significant characteristics figure xt+1In search its matching area, calculate this With area coordinate and ft,iIn xtThe relative displacement of middle coordinate, if all in xt+1It is middle can find matching area template number be Nt,2, then the relative displacement set { s of each motion salient region is obtainedt+1,j(i=1,2 ..., Nt,2| t=1,2 ...).
In one embodiment, present invention also offers a kind of method for obtaining average displacement based on motion conspicuousness point, Wherein, the step S1 includes:
S1.1, the river surface image based on t and t-1 moment frame it is poor, obtain current time motion conspicuousness Characteristic pattern;
S1.2, based on corner detection approach (such as Harris operators), detect the key point in the motion significant characteristics figure, The motion conspicuousness point of t is obtained, its set is designated as { ft,i(i=1,2 ..., Nt,1| t=1,2 ...).
In one embodiment, the step S2 includes:
The sift of motion conspicuousness point is special described in S2.1, the motion significant characteristics figure to each moment in certain hour Levy, the point of the sift characteristic matchings of the motion conspicuousness point at search and t-1 moment from the motion conspicuousness point of t, as Match point.
In one embodiment, denoising Processing (as using Ransac algorithms) is carried out for the match point, removes mistake The match point of matching, retains correct match point.
S2.2, the match point is calculated in the relative displacement in significant characteristics figure is moved of t-1 moment to t, if institute Have in xtIn can find match point number for Nt,m, then the relative displacement set { s that t respectively moves conspicuousness point is obtainedt,k}(k =1,2 ..., Nt,m| t=1,2 ...).
S2.3, the relative displacement based on corresponding match point of each moment in certain hour, obtain the Nogata of relative displacement Figure, to the average value of the value in a range of region near peak value in the histogram and peak value, as in certain hour Average displacement.
In one embodiment, the step S3 includes:Obtained within a period of time many moment match point or Displacement with region, then makes the histogram of these displacements, it will usually form a unimodal figure, we find peak value The position of (p), herein is in being calculated the region that displacement is most concentrated in a period of time.But we are still considered outside p Contribution of the displacement to overall average displacement, segment limit (± ⊿ p can be taken around p), that is, take interval [p- ⊿ p, p+ ⊿ p], will All interframe displacements displacement within this range is completely added up averagely in calculating the time period, that is, average displacement is the total of calculation Average displacement, the error for so contributing to the matching error for eliminating some interframe during subsequently with template matching method to cause.
Fig. 2 shows the histogram in the embodiment of the present invention, and abscissa is the displacement in units of pixel, ordinate in figure It is the region quantity in certain displacement.Figure it is seen that the region quantity that displacement is piled up when being 27 pixels or so is at most, Therefore it is considered as peak value by 27, a scope is taken around it, such as ± 5 pixels, then only the displacement in the range of [22,32] is carried out Averagely, the average displacement in a period of time can be calculated.Find out that some displacements are very big (as 43 is later) in Fig. 2, I Be regarded as what the erroneous matching in template matches was caused, or noise.
In one embodiment, also include before the step S3;
Based on camera distance, camera angle and shooting focal length, obtain described than chi calibration coefficient:
fn=z/af
Wherein, fnIt is that, than chi calibration coefficient, z is distance of the camera lens focus to the water surface, α is imaging plane to image The multiplication factor of plane, f is the focal length of camera lens.
In one embodiment, the average displacement based on than each moment in chi calibration coefficient and certain hour and Inter frame temporal, the calculation expression of mean flow rate obtained in certain hour is:
Wherein, fn be than chi calibration coefficient,It is average displacement, △ t are inter frame temporal, and v is average stream flow superficial velocity.
Fig. 3 shows a kind of structured flowchart of system for measuring river surface mean flow rate of the invention, including:
Motion conspicuousness detection means, for the river surface image based on current time and previous moment, obtains current The motion conspicuousness point or motion salient region of the river surface image at moment;
Average displacement detection means, was connected, based on each moment in certain hour with the motion conspicuousness detection means Motion conspicuousness point or motion salient region, obtain certain hour in average displacement;And
Mean flow rate detection means, is connected with the average displacement detection means, and the mean flow rate detection means is used for Based on average displacement and inter frame temporal than each moment in chi calibration coefficient and certain hour, obtain flat in certain hour Equal flow velocity.
In one embodiment, the motion conspicuousness detection means includes:
Characteristic pattern generation module, it is poor for the frame based on current time and the river surface image of previous moment, worked as The motion significant characteristics figure at preceding moment;And
Conspicuousness detection module, is connected with the characteristic pattern generation module, and the conspicuousness detection module is based on described working as The motion significant characteristics figure at preceding moment, obtains the motion salient region of the river surface image at current time.
In one embodiment, the average displacement detection means includes:
Matching area checks module, is connected with the characteristic pattern generation module and conspicuousness detection module, the Matching band Domain checks that module is used for each motion salient region of search and previous moment in the significant characteristics figure at current time The matching area matched somebody with somebody;
Relative displacement computing module, checks that module is connected with the matching area, and the relative displacement computing module is used for The matching area is calculated in the relative displacement in significant characteristics figure is moved of previous moment to current time;And
Average displacement computing module, based on the relative displacement of corresponding matching area of each moment in certain hour, obtains The histogram of relative displacement, to the average value of the value in a range of region near peak value in the histogram and peak value, makees It is the average displacement in the certain hour.
In one embodiment, river surface image is, in the case where level meter is combined, the primary optical axis of video camera to be hung down It is straight to shoot in the water surface and alignment lenses river.
In one embodiment, camera lens focus to the distance of the water surface is obtained by microwave ranger.
Finally, the present processes are only preferably embodiment, are not intended to limit the scope of the present invention.It is all Within the spirit and principles in the present invention, any modification, equivalent substitution and improvements made etc. should be included in protection of the invention Within the scope of.

Claims (10)

1. it is a kind of measure river surface mean flow rate method, it is characterised in that including:
S1, the river surface image based on current time and previous moment, obtain the motion of the river surface image at current time Conspicuousness point or motion salient region;
S2, the motion conspicuousness point based on each moment in certain hour or motion salient region, obtain in certain hour Average displacement;And
S3, based on than the average displacement and inter frame temporal in chi calibration coefficient, the certain hour, obtain in certain hour Mean flow rate.
2. the method for measuring river surface mean flow rate as claimed in claim 1, it is characterised in that the step S1 includes:
S1.1, the river surface image based on current time and previous moment frame it is poor, obtain current time motion conspicuousness Characteristic pattern;And
S1.2, the motion significant characteristics figure based on the current time, obtain the motion of the river surface image at current time Salient region.
3. the method for measuring river surface mean flow rate as claimed in claim 2, it is characterised in that the step S1.2 bags Include:
S1.2.1, the motion significant characteristics figure binaryzation by current time, obtain binary map;
S1.2.2, several connected domains are chosen in the binary map, any one of connected domain is length or width is 20- The rectangle of 100 pixels;And
S1.2.3, using the connected domain as masking-out, search the correspondence connection in the motion significant characteristics figure at current time The position in domain, as the motion salient region.
4. the method for measuring river surface mean flow rate as claimed in claim 3, it is characterised in that the step S2 includes:
S2.1, in the significant characteristics figure at current time search with previous moment each move salient region match With region;
S2.2, the calculating matching area are in the relative displacement in significant characteristics figure is moved of previous moment to current time;With And
S2.3, the relative displacement based on corresponding matching area of each moment in certain hour, obtain the histogram of relative displacement, To the average value of the value in a range of region near peak value in the histogram and peak value, as in the certain hour Average displacement.
5. the method for measuring river surface mean flow rate as claimed in claim 1, it is characterised in that the step S1 includes:
S1.1, the river surface image based on current time and previous moment frame it is poor, obtain current time motion conspicuousness Characteristic pattern;
S1.2, based on corner detection approach, detect the key point in the motion significant characteristics figure, obtain the fortune at the moment Dynamic conspicuousness point.
6. the method for measuring river surface mean flow rate as claimed in claim 5, it is characterised in that the step S2 includes:
The sift features of motion conspicuousness point described in S2.1, the motion significant characteristics figure to each moment in certain hour, The point of the sift characteristic matchings of the motion conspicuousness point of search and previous moment from the motion conspicuousness point at current time, as Match point;
S2.2, the calculating match point are in the relative displacement in significant characteristics figure is moved of previous moment to current time;And
S2.3, the relative displacement based on corresponding match point of each moment in certain hour, obtain the histogram of relative displacement, right The average value of the value in peak value and the neighbouring a range of region of peak value in the histogram, as the average bit in certain hour Move.
7. the method for measuring river surface mean flow rate as claimed in claim 1, it is characterised in that before the step S3 also Including:
Based on camera distance, camera angle and shooting focal length, obtain described than chi calibration coefficient.
8. it is a kind of measure river surface mean flow rate system, it is characterised in that including:
Motion conspicuousness detection means, for the river surface image based on current time and previous moment, obtains current time River surface image motion conspicuousness point or motion salient region;
Average displacement detection means, is connected, the fortune based on each moment in certain hour with the motion conspicuousness detection means Dynamic conspicuousness point or motion salient region, obtain the average displacement in certain hour;And
Mean flow rate detection means, is connected with the average displacement detection means, and the mean flow rate detection means is used to be based on Than the average displacement and inter frame temporal at each moment in chi calibration coefficient and certain hour, the mean flow in certain hour is obtained Speed.
9. the system for measuring river surface mean flow rate as claimed in claim 8, it is characterised in that the motion conspicuousness inspection Surveying device includes:
Characteristic pattern generation module, it is poor for the frame based on current time and the river surface image of previous moment, when obtaining current The motion significant characteristics figure at quarter;And
Conspicuousness detection module, is connected with the characteristic pattern generation module, when the conspicuousness detection module is based on described current The motion significant characteristics figure at quarter, obtains the motion salient region of the river surface image at current time.
10. the system for measuring river surface mean flow rate as claimed in claim 9, it is characterised in that the average displacement inspection Surveying device includes:
Matching area checks module, is connected with the characteristic pattern generation module and conspicuousness detection module, the matching area inspection Look into what module was matched for the search in the significant characteristics figure at current time with each motion salient region of previous moment Matching area;
Relative displacement computing module, checks that module is connected with the matching area, and the relative displacement computing module is used to calculate The matching area is in the relative displacement in significant characteristics figure is moved of previous moment to current time;And
Average displacement computing module, based on the relative displacement of corresponding matching area of each moment in certain hour, obtains relative The histogram of displacement, to the average value of the value in a range of region near peak value in the histogram and peak value, as institute State the average displacement in certain hour.
CN201710030722.5A 2017-01-16 2017-01-16 A kind of river surface mean flow rate measurement apparatus and method Pending CN106841673A (en)

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CN110187142A (en) * 2019-06-13 2019-08-30 上海彩虹鱼海洋科技股份有限公司 Flow monitoring method and system
CN110632339A (en) * 2019-10-09 2019-12-31 天津天地伟业信息系统集成有限公司 Water flow testing method of video flow velocity tester
CN113077488A (en) * 2021-04-02 2021-07-06 昆明理工大学 River surface flow velocity detection method and device
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CN116679080A (en) * 2023-05-30 2023-09-01 广州伏羲智能科技有限公司 River surface flow velocity determining method and device and electronic equipment

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CN110187142A (en) * 2019-06-13 2019-08-30 上海彩虹鱼海洋科技股份有限公司 Flow monitoring method and system
CN110632339A (en) * 2019-10-09 2019-12-31 天津天地伟业信息系统集成有限公司 Water flow testing method of video flow velocity tester
CN113077488A (en) * 2021-04-02 2021-07-06 昆明理工大学 River surface flow velocity detection method and device
CN113077488B (en) * 2021-04-02 2022-07-01 昆明理工大学 River surface flow velocity detection method and device
CN113822909A (en) * 2021-09-30 2021-12-21 中科(厦门)数据智能研究院 Water flow velocity measurement method based on motion enhancement features
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CN116679080A (en) * 2023-05-30 2023-09-01 广州伏羲智能科技有限公司 River surface flow velocity determining method and device and electronic equipment

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Application publication date: 20170613