CN106667506A - Method and device for detecting lies on basis of electrodermal response and pupil change - Google Patents

Method and device for detecting lies on basis of electrodermal response and pupil change Download PDF

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Publication number
CN106667506A
CN106667506A CN201611190789.7A CN201611190789A CN106667506A CN 106667506 A CN106667506 A CN 106667506A CN 201611190789 A CN201611190789 A CN 201611190789A CN 106667506 A CN106667506 A CN 106667506A
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normal
value
eigenvalues
pupil
data
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CN106667506B (en
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靳海群
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Nanjing Lizhi Psychological Big Data Industry Research Institute Co ltd
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Shanghai Yude Information Technology Co Ltd
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    • AHUMAN NECESSITIES
    • A61MEDICAL OR VETERINARY SCIENCE; HYGIENE
    • A61BDIAGNOSIS; SURGERY; IDENTIFICATION
    • A61B5/00Measuring for diagnostic purposes; Identification of persons
    • A61B5/16Devices for psychotechnics; Testing reaction times ; Devices for evaluating the psychological state
    • A61B5/164Lie detection
    • AHUMAN NECESSITIES
    • A61MEDICAL OR VETERINARY SCIENCE; HYGIENE
    • A61BDIAGNOSIS; SURGERY; IDENTIFICATION
    • A61B3/00Apparatus for testing the eyes; Instruments for examining the eyes
    • A61B3/10Objective types, i.e. instruments for examining the eyes independent of the patients' perceptions or reactions
    • A61B3/11Objective types, i.e. instruments for examining the eyes independent of the patients' perceptions or reactions for measuring interpupillary distance or diameter of pupils
    • A61B3/112Objective types, i.e. instruments for examining the eyes independent of the patients' perceptions or reactions for measuring interpupillary distance or diameter of pupils for measuring diameter of pupils
    • AHUMAN NECESSITIES
    • A61MEDICAL OR VETERINARY SCIENCE; HYGIENE
    • A61BDIAGNOSIS; SURGERY; IDENTIFICATION
    • A61B5/00Measuring for diagnostic purposes; Identification of persons
    • A61B5/05Detecting, measuring or recording for diagnosis by means of electric currents or magnetic fields; Measuring using microwaves or radio waves 
    • A61B5/053Measuring electrical impedance or conductance of a portion of the body
    • A61B5/0531Measuring skin impedance
    • AHUMAN NECESSITIES
    • A61MEDICAL OR VETERINARY SCIENCE; HYGIENE
    • A61BDIAGNOSIS; SURGERY; IDENTIFICATION
    • A61B5/00Measuring for diagnostic purposes; Identification of persons
    • A61B5/72Signal processing specially adapted for physiological signals or for diagnostic purposes
    • GPHYSICS
    • G06COMPUTING; CALCULATING OR COUNTING
    • G06VIMAGE OR VIDEO RECOGNITION OR UNDERSTANDING
    • G06V40/00Recognition of biometric, human-related or animal-related patterns in image or video data
    • G06V40/10Human or animal bodies, e.g. vehicle occupants or pedestrians; Body parts, e.g. hands
    • G06V40/18Eye characteristics, e.g. of the iris
    • G06V40/197Matching; Classification

Abstract

The invention discloses a method and a device for detecting lies on the basis of electrodermal response and pupil change. The method includes determining normal feature values of test persons according to normal electrodermal response data of the test persons in non-lying states, normal pupil data and preset weight values; determining test feature values of the test persons according to test electrodermal response data of the test persons in test states, test pupil data and the weight values; comparing the normal feature values to the test feature values to obtain lie detection results of the test persons. The method and the device have the advantages that the method and the device are high in feasibility, and high lie detection accuracy can be guaranteed.

Description

A kind of lie detecting method changed based on galvanic skin response and pupil and device
Technical field
The present embodiments relate to lie-detection technology field, more particularly to a kind of survey changed based on galvanic skin response and pupil Lie method and device.
Background technology
Through the development in more than halfth century, lie-detection technology investigation in the western countries headed by the U.S., safety and It is widely used in Ji Yao departments.A lie detector is a kind of effective means that public security department is screened for crime fact, is passed through The mode of asked questions stimulates testee, so as to obtain the corresponding physiological change of testee, by analyzing these Physiological change is judging whether testee lies.Currently known a lie detector is mainly by detection galvanic skin response, chest The physiological parameters such as breathing, pupil, blood pressure are being detected a lie.For example, when tested person lies, its psychology can feel nervous, so as to Pupil is caused independently not amplify, and the salt branch of its skin surface uprises, and skin conductivity rate strengthens, therefore, according to these pupils The physiological parameters such as hole situation of change, galvanic skin response just can determine whether out whether it lies.
It is the face's video by receiving user based on the scheme of detecting a lie of facial expression in prior art, detection face regards The least one frame of facial image feature of frequency, being then based on facial image feature carries out human facial expression recognition, so as to using training The probability of lying of the facial expression that good artificial neural networks are recognized.
Although the face recognition technology utilized in such scheme is awfully hot topic, and adaptable field is also very more, But it is not high for the feasibility that judges to lie because everyone countenance difference can be than larger, somebody when lying Can be poker-faced when lying, can smile when somebody lies, individual variation causes the classification of data set extremely difficult.If One people can smile when lying, then by the photo of a smile, it is impossible to distinguish this people and only smile still Lie.Thus, discriminate whether that the accuracy rate lied is relatively low, feasibility is not high using the scheme of human facial expression recognition.
The content of the invention
The present invention provides a kind of lie detecting method changed based on galvanic skin response and pupil and device, to realize work(of detecting a lie Energy.
To reach this purpose, the embodiment of the present invention is employed the following technical solutions:
A kind of lie detecting method changed based on galvanic skin response and pupil, including:
Normal skin electricity response data, normal pupil data and default power according to tester under the state of not lying Weight values, determine the normal eigenvalues of the tester;
Test galvanic skin response data, test pupil data and the power according to the tester under test mode Weight values, determine the test feature value of the tester;
Relatively the normal eigenvalues and the test feature value, obtain the result of detecting a lie of the tester.
Further, in said method, the determination of the weighted value includes:
Normal skin electricity response data xi and normal pupil data according to N number of training sample user under the state of not lying Yi, builds the decision function comprising weight parameter:
F (X, Y)=y*+α·(x*-y*)
Wherein α is weight parameter,
Normal skin electricity response data and normal pupil data according to M verification sample of users under the state of not lying, Decision function is trained, the weighted value is obtained.
Further, the normal skin electricity reaction in said method, according to M verification sample of users under the state of not lying Data and normal pupil data, are trained to decision function, obtain the weighted value, including:
For each value of default weight parameter, the value is respectively obtained according to the decision function corresponding normal Eigenvalue is interval;
For each value, according to normal skin electricity response data of the M verification sample of users under the state of not lying with Normal pupil data, and the discriminant function, respectively obtain the normal characteristics of the corresponding M verification sample of users of the value Value;
For each value, the normal eigenvalues that the corresponding M verification sample of users of the value is determined respectively fall in correspondence The interval probability of normal eigenvalues;
The corresponding value of maximum of probability is defined as into the weighted value.
Further, in said method, for each value of default weight parameter, distinguish according to the decision function Obtain the corresponding normal eigenvalues of the value interval, including:
It is normal under the state of not lying according to N number of training sample user for each value of default weight parameter Galvanic skin response data and normal pupil data, and the discriminant function respectively obtains the normal spy of N number of training sample user Value indicative;
Maximum normal eigenvalues and minimum normal eigenvalues are selected from the normal eigenvalues of N number of training sample user Build corresponding normal eigenvalues interval.
Further, in said method, the galvanic skin response data for galvanic skin response current value, the pupil number According to the ratio that eyeball is occupied for pupil.
Correspondingly, invention additionally discloses a kind of device of detecting a lie changed based on galvanic skin response and pupil, including:
Normal eigenvalues determining module, for according to tester under the state of not lying normal skin electricity response data, Normal pupil data and default weighted value, determine the normal eigenvalues of the tester;
Test feature value determining module, for the test galvanic skin response number according to the tester under test mode According to, the test pupil data and weighted value, the test feature value of the tester is determined;
Result of detecting a lie determining module, for the relatively normal eigenvalues and the test feature value, obtains the test The result of detecting a lie of person.
Further, in said apparatus, including weighted value determining module, the weighted value determining module includes:
Decision function construction unit, it is anti-for the normal skin electricity according to N number of training sample user under the state of not lying Data xi and normal pupil data yi are answered, the decision function comprising weight parameter is built:
F (X, Y)=y*+α·(x*-y*)
Wherein α is weight parameter,
Decision function training unit, it is anti-for the normal skin electricity according to M verification sample of users under the state of not lying Data and normal pupil data are answered, decision function is trained, obtain the weighted value.
Further, in said apparatus, the decision function training unit includes:
Characteristic interval subelement, for for each value of default weight parameter, distinguishing according to the decision function Obtain the corresponding normal eigenvalues of the value interval;
Sample characteristics subelement, for for each value, sample of users is verified under the state of not lying just according to M Normal galvanic skin response data and normal pupil data, and the discriminant function, respectively obtain the corresponding M verification sample of the value The normal eigenvalues of this user;
Determine the probability subelement, for for each value, the corresponding M verification sample of users of the value being determined respectively Normal eigenvalues fall in the interval probability of corresponding normal eigenvalues;
Weighted value subelement, for the corresponding value of maximum of probability to be defined as into the weighted value.
Further, in said apparatus, the characteristic interval subelement specifically for:
It is normal under the state of not lying according to N number of training sample user for each value of default weight parameter Galvanic skin response data and normal pupil data, and the discriminant function respectively obtains the normal spy of N number of training sample user Value indicative;
Maximum normal eigenvalues and minimum normal eigenvalues are selected from the normal eigenvalues of N number of training sample user Build corresponding normal eigenvalues interval.
Further, in said apparatus, the galvanic skin response data for galvanic skin response current value, the pupil number According to the ratio that eyeball is occupied for pupil.
The technical scheme that the embodiment of the present invention is provided, by gathering galvanic skin response data and pupil data, and is carried out Corresponding data processing, realizes the higher lie detection function of accuracy rate, can have for the delinquent one kind that provides of public security department's strike Effect approach, it is also possible to as an interesting application in life.
Description of the drawings
In order to be illustrated more clearly that the embodiment of the present invention or technical scheme of the prior art, below will be to embodiment or existing The accompanying drawing to be used needed for having technology description is briefly described, it should be apparent that, drawings in the following description are only this Inventive embodiment, for those of ordinary skill in the art, on the premise of not paying creative work, can be with basis The accompanying drawing of offer obtains other accompanying drawings.
Fig. 1 is a kind of flow process of lie detecting method changed based on galvanic skin response and pupil that the embodiment of the present invention one is provided Schematic diagram;
Fig. 2 is the idiographic flow schematic diagram of detect a lie stage-training part and part of detecting that the embodiment of the present invention one is provided;
Fig. 3 is the overall flow schematic diagram of detect a lie data acquisition and process that the embodiment of the present invention one is provided;
Fig. 4 is a kind of structure of lie detecting method changed based on galvanic skin response and pupil that the embodiment of the present invention two is provided Schematic diagram.
Specific embodiment
With reference to the accompanying drawings and examples the present invention is described in further detail.It is understood that this place is retouched The specific embodiment stated is used only for explaining the present invention, rather than limitation of the invention.It also should be noted that, in order to just Part related to the present invention rather than entire infrastructure are illustrate only in description, accompanying drawing.
Embodiment one
Accompanying drawing 1 is referred to, is a kind of based on detecting a lie that galvanic skin response and pupil change of the offer of the embodiment of the present invention one The schematic flow sheet of method, the method is applied to and judges the scene whether testee lies by physiological reaction, the method by Detect a lie device to perform based on what galvanic skin response and pupil changed, the device can be realized by software and/or hardware, be integrated in The inside of operation terminal unit.The method specifically includes following steps:
S110, the normal skin electricity response data according to tester under the state of not lying, normal pupil data and pre- If weighted value, determine the normal eigenvalues of the tester.
Specifically, put question to some normal and consentient problem to be trained tester, such issues that answer can only For "Yes" or "No", these problems primarily to obtain galvanic skin response data of the tester in the case where not lying and Pupil data, and the value of galvanic skin response data several times is made after normalized as the normal model of galvanic skin response data Enclose, the data value of pupil size several times is made as the normal range of pupil size data after normalized, finally to two The each in addition corresponding weight of kind of data, determines the scope of the normal eigenvalues of whole test.
S120, the test galvanic skin response data according to the tester under test mode, test pupil data and The weighted value, determines the test feature value of the tester.
Specifically, by puing question to tester event to be confirmed related tender subject, tester is obtained in test mode Under galvanic skin response data and pupil data, and respectively the value of galvanic skin response data and pupil data made into normalized Afterwards each in addition corresponding weight, obtains test value.
Normal eigenvalues described in S130, comparison and the test feature value, obtain the result of detecting a lie of the tester.
Specifically, with reference to Fig. 2, on the basis of S110 and S120, it is known that the technical scheme that the present invention is provided can divide To train and testing two parts.
Training part:The part mainly for obtain tester do not lie in the case of galvanic skin response data and pupil Hole data, so as to obtain normal eigenvalues scope.
Part of detecting:Galvanic skin response data and pupil number of the part mainly for acquisition tester under test mode According to so as to obtain test value.Further, by the way that test value is compared with the scope of normal eigenvalues, if test value Beyond normal eigenvalues scope, then it is determined as lying;Otherwise, do not lie.
It should be noted that the galvanic skin response data are the current value of galvanic skin response, galvanic skin response can lead to Cross tester to wear the wearable devices such as bracelet to gather galvanic skin response data;The pupil data occupies eyeball for pupil Ratio, pupil situation of change can gather pupil data using the first-class mobile terminal device of cell-phone camera, and by two kinds Data in addition weight finally carrying out judging whether to lie.
Explanation is needed further exist for, with reference to Fig. 3, tester is anti-by wearing the wearable devices such as bracelet collection skin pricktest Data are answered, and data storage is got off to be sent to mobile phone terminal;Again by the picture data of mobile phone camera collecting test person, then Eyes are oriented using algorithm of target detection, the ratio that pupil occupies eyeball is obtained, and this data are big as pupil Little data are preserved, and eventually through mobile phone terminal data processing is carried out, and obtain result of detecting a lie.
Preferably, the determination of the weighted value includes:
Normal skin electricity response data x according to N number of training sample user under the state of not lyingiWith normal pupil data yi, build the decision function comprising weight parameter:
F (X, Y)=y*+α·(x*-y*)
Wherein α is weight parameter,
Normal skin electricity response data and normal pupil data according to M verification sample of users under the state of not lying, Decision function is trained, the weighted value is obtained.
It should be noted that galvanic skin response data xiMeansigma methodss beIts standard deviation isValue after normalization isCan obtain in the same manner, pupil data yiMeansigma methodss ForIts standard deviation isValue after normalization is
The overall eigenvalue of order is F (X, Y), and the corresponding weight of galvanic skin response data is α, and α ∈ (0,1), pupil data Corresponding weight is β, and β=1- α, then decision function can be obtained in the following manner:
Finally draw the decision function comprising weight parameter α:F (X, Y)=y*+α·(x*-y*)。
Preferably, it is described according to the electric response data of M normal skin of the verification sample of users under the state of not lying and just Often pupil data, is trained to decision function, obtains the weighted value, including:
Part I, for each value of default weight parameter, according to the decision function value is respectively obtained Corresponding normal eigenvalues are interval;
Part II, it is anti-according to normal skin electricity of the M verification sample of users under the state of not lying for each value Data and normal pupil data, and the discriminant function are answered, the corresponding M verification sample of users of the value is being respectively obtained just Normal eigenvalue;
Part III, for each value, determines respectively the normal eigenvalues of the corresponding M verification sample of users of the value Fall in the interval probability of corresponding normal eigenvalues;The corresponding value of maximum of probability is defined as into the weighted value.
Preferably, in Part I, for each value of default weight parameter, obtain respectively according to the decision function It is interval to the corresponding normal eigenvalues of the value, including:
It is normal under the state of not lying according to N number of training sample user for each value of default weight parameter Galvanic skin response data and normal pupil data, and the discriminant function respectively obtains the normal spy of N number of training sample user Value indicative;
Maximum normal eigenvalues and minimum normal eigenvalues are selected from the normal eigenvalues of N number of training sample user Build corresponding normal eigenvalues interval.
It should be noted that F (X, Y) correspondence when can obtain the α of optimum and not lie by the method for machine learning Scope, specifically, obtain F (X, Y) by way of continuous iteration α, and verify in F (X, Y) area using verification sample Between probability, it is optimal value to take during maximum probability corresponding α.
In order to the optimal value and normal eigenvalues F (X, Y) that represent weight value α in the embodiment of the present invention that become apparent from it is right The interval scheme implementation process answered, is described in detail below with an instantiation.The normal training sample that hypothesis is collected Number is 10, and therein 60% is used for training, and is denoted as N, i.e. N=0.6*10=6, during training, if taking α=0.1, and decision function F (X, Y)=y*+α·(x*-y*) several to there is 6 normal eigenvalues, maximum normal characteristics are selected in this 6 normal eigenvalues It is interval that value and minimum normal eigenvalues build corresponding normal eigenvalues;Intersection is carried out by remaining 40% as verification sample to test Card, is denoted as M, i.e. M=0.4*10=4, during verification, first this 4 verification samples is carried out with training identical to process, if being such as α=0.1 is taken, 4 verification normal eigenvalues are obtained, and counts in the interval probability of corresponding normal eigenvalues.If taking α in the same manner =0.2, another 4 verifications normal eigenvalues are obtained, and count in the interval probability of corresponding normal eigenvalues, until statistics To the corresponding probability of all values of α, therefrom choose the corresponding α values of maximum of probability and be defined as the weighted value, and α ∈ (0,1), can The concrete value of α is determined according to practical situation.
The technical scheme that the embodiment of the present invention is provided, by gathering galvanic skin response data and pupil data, and is carried out Corresponding data processing, realizes the higher lie detection function of accuracy rate, can have for the delinquent one kind that provides of public security department's strike Effect approach, it is also possible to as an interesting application in life.
Embodiment two
Accompanying drawing 4 is referred to, is a kind of based on detecting a lie that galvanic skin response and pupil change of the offer of the embodiment of the present invention two The structural representation of device, the device is specifically comprising such as lower module:
Normal eigenvalues determining module 21, for the normal skin electricity stoichiometric number according to tester under the state of not lying According to, normal pupil data and default weighted value, the normal eigenvalues of the tester are determined;
Test feature value determining module 22, for the test galvanic skin response number according to the tester under test mode According to, the test pupil data and weighted value, the test feature value of the tester is determined;
Result of detecting a lie determining module 23, for the relatively normal eigenvalues and the test feature value, obtains the survey The result of detecting a lie of examination person.
Preferably, also including weighted value determining module, the weighted value determining module includes:
Decision function construction unit, it is anti-for the normal skin electricity according to N number of training sample user under the state of not lying Answer data xiWith normal pupil data yi, build the decision function comprising weight parameter:
F (X, Y)=y*+α·(x*-y*)
Wherein α is weight parameter,
Decision function training unit, it is anti-for the normal skin electricity according to M verification sample of users under the state of not lying Data and normal pupil data are answered, decision function is trained, obtain the weighted value.
Preferably, the decision function training unit includes:Characteristic interval subelement, for for default weight parameter Each value, respectively obtain the corresponding normal eigenvalues of the value according to the decision function interval;
Sample characteristics subelement, for for each value, sample of users is verified under the state of not lying just according to M Normal galvanic skin response data and normal pupil data, and the discriminant function, respectively obtain the corresponding M verification sample of the value The normal eigenvalues of this user;
Determine the probability subelement, for for each value, the corresponding M verification sample of users of the value being determined respectively Normal eigenvalues fall in the interval probability of corresponding normal eigenvalues;
Weighted value subelement, for the corresponding value of maximum of probability to be defined as into the weighted value.
Preferably, the characteristic interval subelement specifically for:For each value of default weight parameter, according to N Normal skin electricity response data and normal pupil data of the individual training sample user under the state of not lying, and the judgement letter Number respectively obtains the normal eigenvalues of N number of training sample user;Select from the normal eigenvalues of N number of training sample user It is interval that maximum normal eigenvalues and minimum normal eigenvalues build corresponding normal eigenvalues.
Needs say that the galvanic skin response data are the current value of galvanic skin response, and the pupil data is pupil Occupy the ratio of eyeball.The galvanic skin response data can be gathered by Wearable devices such as bracelets, the pupil number According to can be by mobile phone camera gather.
The technical scheme that the embodiment of the present invention is provided, by gathering galvanic skin response data and pupil data, and is carried out Corresponding data processing, with higher feasibility, it is ensured that the accuracy rate detected a lie is higher.
The said goods can perform the method that any embodiment of the present invention is provided, and possess the corresponding functional module of execution method And beneficial effect.
Note, above are only presently preferred embodiments of the present invention and institute's application technology principle.It will be appreciated by those skilled in the art that The invention is not restricted to specific embodiment described here, can carry out for a person skilled in the art various obvious changes, Readjust and substitute without departing from protection scope of the present invention.Therefore, although the present invention is carried out by above example It is described in further detail, but the present invention is not limited only to above example, without departing from the inventive concept, also More other Equivalent embodiments can be included, and the scope of the present invention is determined by scope of the appended claims.

Claims (10)

1. a kind of lie detecting method changed based on galvanic skin response and pupil, it is characterised in that include:
Normal skin electricity response data, normal pupil data and default weight according to tester under the state of not lying Value, determines the normal eigenvalues of the tester;
Test galvanic skin response data, test pupil data and the weight according to the tester under test mode Value, determines the test feature value of the tester;
Relatively the normal eigenvalues and the test feature value, obtain the result of detecting a lie of the tester.
2. method according to claim 1, it is characterised in that the determination of the weighted value includes:
Normal skin electricity response data xi and normal pupil data yi according to N number of training sample user under the state of not lying, Build the decision function comprising weight parameter:
F (X, Y)=y*+α·(x*-y*)
Wherein α is weight parameter,
y * = y i - μ y σ y , μ y = 1 N Σ i = 1 N y i , σ y = 1 N Σ i = 1 N ( y i - μ y ) 2 ;
Normal skin electricity response data and normal pupil data according to M verification sample of users under the state of not lying, to sentencing Certainly function is trained, and obtains the weighted value.
3. method according to claim 2, it is characterised in that verify sample of users under the state of not lying according to M Normal skin electricity response data and normal pupil data, are trained to decision function, obtain the weighted value, including:
For each value of default weight parameter, according to the decision function the corresponding normal characteristics of the value are respectively obtained Value is interval;
For each value, normal skin electricity response data according to M verification sample of users under the state of not lying and normally Pupil data, and the discriminant function, respectively obtain the normal eigenvalues of the corresponding M verification sample of users of the value;
For each value, determine respectively the corresponding M verification sample of users of the value normal eigenvalues fall it is corresponding just The interval probability of normal eigenvalue;
The corresponding value of maximum of probability is defined as into the weighted value.
4. method according to claim 3, it is characterised in that for each value of default weight parameter, according to institute State decision function and respectively obtain the corresponding normal eigenvalues interval of the value, including:
For each value of default weight parameter, according to normal skin of N number of training sample user under the state of not lying Electric response data and normal pupil data, and the discriminant function respectively obtains the normal eigenvalues of N number of training sample user;
Maximum normal eigenvalues and minimum normal eigenvalues are selected to build from the normal eigenvalues of N number of training sample user Corresponding normal eigenvalues are interval.
5. the method according to any one of claim 1-4, it is characterised in that the galvanic skin response data are that skin pricktest is anti- The current value answered, the pupil data occupies the ratio of eyeball for pupil.
6. a kind of device of detecting a lie changed based on galvanic skin response and pupil, it is characterised in that include:
Normal eigenvalues determining module, for the normal skin electricity response data according to tester under the state of not lying, normally Pupil data and default weighted value, determine the normal eigenvalues of the tester;
Test feature value determining module, for the test galvanic skin response data according to the tester under test mode, surveys Examination pupil data and the weighted value, determine the test feature value of the tester;
Result of detecting a lie determining module, for the relatively normal eigenvalues and the test feature value, obtains the tester's Detect a lie result.
7. device according to claim 6, it is characterised in that including weighted value determining module, the weighted value determines mould Block includes:
Decision function construction unit, for the normal skin electricity stoichiometric number according to N number of training sample user under the state of not lying According to xi and normal pupil data yi, the decision function comprising weight parameter is built:
F (X, Y)=y*+α·(x*-y*)
Wherein α is weight parameter,
y * = y i - μ y σ y , μ y = 1 N Σ i = 1 N y i , σ y = 1 N Σ i = 1 N ( y i - μ y ) 2 ;
Decision function training unit, for the normal skin electricity stoichiometric number according to M verification sample of users under the state of not lying According to normal pupil data, decision function is trained, obtain the weighted value.
8. device according to claim 7, it is characterised in that the decision function training unit includes:
Characteristic interval subelement, for for each value of default weight parameter, respectively obtaining according to the decision function The corresponding normal eigenvalues of the value are interval;
Sample characteristics subelement, for for each value, according to normal skin of the M verification sample of users under the state of not lying Electric skin response data and normal pupil data, and the discriminant function, respectively obtain the corresponding M verification sample of the value and use The normal eigenvalues at family;
Determine the probability subelement, for for each value, the normal of the corresponding M verification sample of users of the value being determined respectively Eigenvalue falls in the interval probability of corresponding normal eigenvalues;
Weighted value subelement, for the corresponding value of maximum of probability to be defined as into the weighted value.
9. device according to claim 8, it is characterised in that the characteristic interval subelement specifically for:
For each value of default weight parameter, according to normal skin of N number of training sample user under the state of not lying Electric response data and normal pupil data, and the discriminant function respectively obtains the normal eigenvalues of N number of training sample user;
Maximum normal eigenvalues and minimum normal eigenvalues are selected to build from the normal eigenvalues of N number of training sample user Corresponding normal eigenvalues are interval.
10. the device according to any one of claim 6-9, it is characterised in that the galvanic skin response data are skin pricktest The current value of reaction, the pupil data occupies the ratio of eyeball for pupil.
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CN110393504A (en) * 2018-04-24 2019-11-01 高金铎 A kind of method and device of pupil detection
CN110638472A (en) * 2019-09-27 2020-01-03 新华网股份有限公司 Emotion recognition method and device, electronic equipment and computer readable storage medium
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CN111714142A (en) * 2020-06-12 2020-09-29 京东数字科技控股有限公司 Psychological state evaluation method, device, equipment and computer readable storage medium
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