WO2023062793A1 - Système d'analyse vidéo - Google Patents

Système d'analyse vidéo Download PDF

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Publication number
WO2023062793A1
WO2023062793A1 PCT/JP2021/038122 JP2021038122W WO2023062793A1 WO 2023062793 A1 WO2023062793 A1 WO 2023062793A1 JP 2021038122 W JP2021038122 W JP 2021038122W WO 2023062793 A1 WO2023062793 A1 WO 2023062793A1
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user
unit
biological reaction
video meeting
change
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PCT/JP2021/038122
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English (en)
Japanese (ja)
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渉三 神谷
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株式会社I’mbesideyou
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Priority to PCT/JP2021/038122 priority Critical patent/WO2023062793A1/fr
Priority to JP2022517950A priority patent/JP7145556B1/ja
Priority to JP2022144275A priority patent/JP2023059238A/ja
Publication of WO2023062793A1 publication Critical patent/WO2023062793A1/fr

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    • HELECTRICITY
    • H04ELECTRIC COMMUNICATION TECHNIQUE
    • H04NPICTORIAL COMMUNICATION, e.g. TELEVISION
    • H04N7/00Television systems
    • H04N7/14Systems for two-way working
    • H04N7/15Conference systems

Definitions

  • the present invention relates to a moving image analysis system that analyzes participants' biological reactions based on moving images obtained from online sessions conducted by multiple participants.
  • Patent Document 1 A technique for analyzing the emotions others receive in response to a speaker's remarks (see Patent Document 1, for example).
  • Patent Document 2 For example.
  • Patent Document 3 A technique for chronologically analyzing changes in a subject's facial expression over a long period of time and estimating the emotions held during that period.
  • Patent Documents 3 to 5 There are also known techniques for identifying the factors that most affected changes in emotions (see Patent Documents 3 to 5, for example).
  • Patent Documents 3 to 5 There is also known a technique that compares the subject's usual facial expression with the current facial expression and issues an alert when the facial expression is dark (see Patent Document 6, for example).
  • Patent Document 6 There is also known a technique for determining the degree of emotion of a subject by comparing the subject's normal (expressionless) facial expression with the current facial expression (see, for example, Patent Documents 7 to 9).
  • Techniques for analyzing the emotions of an organization and the atmosphere felt by individuals within a group are also known (see Patent Documents 10 and 11, for example).
  • the purpose of the present invention is to objectively evaluate these communications in order to conduct more efficient communication in situations where online communication is the main focus, such as meetings and lectures.
  • a moving image analysis system a moving image acquisition unit that acquires a moving image obtained by shooting the user during the video meeting; an analysis unit that analyzes changes in biological reactions of the user based on the moving image acquired by the moving image acquisition unit; a character data storage unit storing character data associated with predetermined feature parameters; a character analysis unit that identifies the most similar character data by analyzing the result of the analysis and the characteristic parameters; and a character data providing unit that provides the character data.
  • FIG. 1 is an example of a functional block diagram of an evaluation terminal according to an embodiment of the present invention
  • FIG. 3 is a diagram showing functional configuration example 1 of the evaluation terminal according to the embodiment of the present invention
  • FIG. 8 is a diagram showing functional configuration example 2 of the evaluation terminal according to the embodiment of the present invention
  • FIG. 10 is a diagram showing a functional configuration example 3 of the evaluation terminal according to the embodiment of the present invention
  • 7 is a screen display example according to the functional configuration example 3 of FIG. 6.
  • FIG. FIG. 7 is another screen display example according to the functional configuration example 3 of FIG. 6.
  • FIG. FIG. 12 is a diagram showing another configuration of functional configuration example 3 of the evaluation terminal according to the embodiment of the present invention
  • FIG. 12 is a diagram showing another configuration of functional configuration example 3 of the evaluation terminal according to the embodiment of the present invention.
  • FIG. 4 is a diagram showing the data structure of the evaluation terminal according to the embodiment of the present invention.
  • FIG. 11 is a diagram showing a data configuration of a character data storage unit shown in FIG. 10;
  • the contents of the embodiments of the present disclosure are listed and described.
  • the present disclosure has the following configurations. [Item 1] In an environment where a video meeting is held among a plurality of users, the reaction of the user is analyzed based on a moving image obtained by photographing the user regardless of whether or not the user is displayed on the screen during the video meeting.
  • a moving image analysis system a moving image acquisition unit that acquires a moving image obtained by shooting the user during the video meeting; an analysis unit that analyzes changes in biological reactions of the user based on the moving image acquired by the moving image acquisition unit; a character data storage unit storing character data associated with predetermined feature parameters; a character analysis unit that identifies the most similar character data by analyzing the result of the analysis and the characteristic parameters; and a character data providing unit that provides the character data.
  • the video meeting evaluation terminal according to item 1 A character data registration unit that accepts registration of association between the feature parameter and the character, Video meeting evaluation terminal.
  • the video meeting evaluation terminal according to item 1 or item 2 further comprising a character search unit that receives selection of the character data and searches for the analysis result similar to the character data; Video meeting evaluation terminal.
  • the video meeting evaluation terminal according to item 1 further comprising an emotion evaluation unit that evaluates the degree of emotion of the user according to an evaluation criterion leveled among a plurality of users based on changes in the biological reaction; The emotion evaluation unit determines the degree of emotion based on the magnitude of the difference between the current biological reaction and the normal biological reaction, and the degree of emotion adjusted according to the likelihood of the same emotion occurring by the user. evaluate, Video meeting evaluation terminal.
  • the video meeting evaluation terminal Analyzing the movement of the eyes of each of the plurality of users to generate a heat map indicating the direction of the eyes, and analyzing the user by comparing the generated heat map with the heat maps generated for other users A determination unit that determines whether the change in the biological reaction obtained is specific compared to the change in the biological reaction analyzed for the other user, Video meeting evaluation terminal.
  • the video meeting evaluation terminal Determining whether the change in the biological reaction analyzed for the user is specific compared to the change in the biological reaction analyzed for another user, and the biological reaction determined to be specific to the user identifying an event occurring with respect to at least one of the user, the other user, or the environment when a change occurs in the user, and analyzing the degree of correlation between the change in the user's biological reaction and the event , clustering the user or the event based on the analysis result of the correlation when it is determined that the correlation is equal to or higher than a certain level; Video meeting evaluation terminal.
  • a video session in an environment where a video session (hereinafter referred to as an online session including one-way and two-way sessions) is held by a plurality of people, the person to be analyzed among the plurality of people is different from the others. It is a system that analyzes and evaluates specific emotions (feelings that occur in response to one's own or others' words and actions. pleasant/unpleasant, or their degree).
  • Online sessions are, for example, online meetings, online classes, online chats, etc. Terminals installed in multiple locations are connected to a server via a communication network such as the Internet, and moving images are transmitted between multiple terminals through the server. It's made to be interactable.
  • Moving images handled in online sessions include facial images and voices of users using terminals.
  • Moving images also include images such as materials that are shared and viewed by a plurality of users. It is possible to switch between the face image and the document image on the screen of each terminal to display only one of them, or to divide the display area and display the face image and the document image at the same time. In addition, it is possible to display the image of one user out of a plurality of users on the full screen, or divide the images of some or all of the users into small screens and display them. It is possible to designate one or a plurality of users among a plurality of users participating in an online session using terminals as analysis subjects.
  • an online session leader, moderator, or manager designates any user as an analysis subject.
  • Hosts of online sessions are, for example, instructors of online classes, chairpersons and facilitators of online meetings, coaches of sessions for coaching purposes, and the like.
  • An online session host is typically one of the users participating in the online session, but may be another person who does not participate in the online session. It should be noted that all participants may be subject to analysis without specifying the person to be analyzed.
  • an online session leader, moderator, or administrator hereinafter collectively referred to as the organizer to designate any user as an analysis subject.
  • Hosts of online sessions are, for example, instructors of online classes, chairpersons and facilitators of online meetings, coaches of sessions for coaching purposes, and the like.
  • An online session host is typically one of the users participating in the online session, but may be another person who does not participate in the online session.
  • the video session evaluation system displays at least moving images obtained from a video session established between a plurality of terminals.
  • the displayed moving image is acquired by the terminal, and at least a face image included in the moving image is identified for each predetermined frame unit. An evaluation value for the identified face image is then calculated.
  • the evaluation value is shared as necessary.
  • the acquired moving image is stored in the terminal, analyzed and evaluated on the terminal, and the result is provided to the user of the terminal. Therefore, for example, even a video session containing personal information or a video session containing confidential information can be analyzed and evaluated without providing the moving image itself to an external evaluation agency or the like.
  • the evaluation result evaluation value
  • the video session evaluation system includes user terminals 10 and 20 each having at least an input unit such as a camera unit and a microphone unit, a display unit such as a display, and an output unit such as a speaker. , a video session service terminal 30 for providing an interactive video session to the user terminals 10, 20, and an evaluation terminal 40 for performing part of the evaluation of the video session.
  • Each functional block, functional unit, and functional module described below can be configured by any of hardware, DSP (Digital Signal Processor), and software provided in a computer, for example.
  • DSP Digital Signal Processor
  • a computer CPU random access memory
  • RAM random access memory
  • ROM read-only memory
  • a series of processes by the systems and terminals described herein may be implemented using software, hardware, or a combination of software and hardware. It is possible to prepare a computer program for realizing each function of the user terminal 10 according to the present embodiment and to implement it in a PC or the like. It is also possible to provide a computer-readable recording medium storing such a computer program.
  • the recording medium is, for example, a magnetic disk, an optical disk, a magneto-optical disk, a flash memory, or the like.
  • the above computer program may be distributed, for example, via a network without using a recording medium.
  • the evaluation terminal acquires a moving image from a video session service terminal, identifies at least a face image included in the moving image for each predetermined frame unit, and calculates an evaluation value for the face image ( will be described in detail later).
  • the video session service provided by the video session service terminal (hereinafter sometimes simply referred to as "this service") provides user terminals 10 and 20 with two-way images and voice. Communication is possible.
  • this service a moving image captured by the camera of the other user's terminal is displayed on the display of the user's terminal, and audio captured by the microphone of the other's user's terminal can be output from the speaker.
  • this service allows both or either of the user terminals to record moving images and sounds (collectively referred to as "moving images, etc.") in the storage unit of at least one of the user terminals. configured as possible.
  • the recorded moving image information Vs (hereinafter referred to as “recorded information”) is cached in the user terminal that started recording and is locally recorded only in one of the user terminals. If necessary, the user can view the recorded information by himself or share it with others within the scope of using this service.
  • FIG. 3 is a block diagram showing a configuration example according to this embodiment.
  • the video session evaluation system of this embodiment is implemented as a functional configuration of the user terminal 10.
  • the user terminal 10 has, as its functions, a moving image acquisition unit 11, a biological reaction analysis unit 12, a peculiar determination unit 13, a related event identification unit 14, a clustering unit 15, and an analysis result notification unit 16.
  • the moving image acquisition unit 11 acquires from each terminal a moving image obtained by photographing a plurality of people (a plurality of users) with a camera provided in each terminal during an online session. It does not matter whether the moving image acquired from each terminal is set to be displayed on the screen of each terminal. That is, the moving image acquisition unit 11 acquires moving images from each terminal, including moving images being displayed and moving images not being displayed on each terminal.
  • the biological reaction analysis unit 12 analyzes changes in the biological reaction of each of a plurality of people based on the moving images (whether or not they are being displayed on the screen) acquired by the moving image acquiring unit 11.
  • the biological reaction analysis unit 12 separates the moving image acquired by the moving image acquisition unit 11 into a set of images (collection of frame images) and voice, and analyzes changes in the biological reaction from each.
  • the biological reaction analysis unit 12 analyzes the user's facial image using a frame image separated from the moving image acquired by the moving image acquisition unit 11 to obtain at least one of facial expression, gaze, pulse, and facial movement. Analyze changes in biological reactions related to Further, the biological reaction analysis unit 12 analyzes the voice separated from the moving image acquired by the moving image acquisition unit 11 to analyze changes in the biological reaction related to at least one of the user's utterance content and voice quality.
  • the biological reaction analysis unit 12 calculates a biological reaction index value reflecting the change in biological reaction by quantifying the change in biological reaction according to a predetermined standard.
  • the analysis of changes in facial expressions is performed as follows. That is, for each frame image, a facial region is identified from the frame image, and the identified facial expressions are classified into a plurality of types according to an image analysis model machine-learned in advance. Then, based on the classification results, it analyzes whether positive facial expression changes occur between consecutive frame images, whether negative facial expression changes occur, and to what extent the facial expression changes occur, A facial expression change index value corresponding to the analysis result is output.
  • the analysis of changes in line of sight is performed as follows. That is, for each frame image, the eye region is specified in the frame image, and the orientation of both eyes is analyzed to analyze where the user is looking. For example, it analyzes whether the user is looking at the face of the speaker being displayed, whether the user is looking at the shared material being displayed, or whether the user is looking outside the screen. Also, it may be analyzed whether the eye movement is large or small, or whether the movement is frequent or infrequent. A change in line of sight is also related to the user's degree of concentration.
  • the biological reaction analysis unit 12 outputs a line-of-sight change index value according to the analysis result of the line-of-sight change.
  • the analysis of pulse changes is performed, for example, as follows. That is, for each frame image, the face area is specified in the frame image. Then, using a trained image analysis model that captures numerical values of face color information (G of RGB), changes in the G color of the face surface are analyzed. By arranging the results along the time axis, a waveform representing changes in color information is formed, and the pulse is identified from this waveform. When a person is tense, the pulse speeds up, and when the person is calm, the pulse slows down. The biological reaction analysis unit 12 outputs a pulse change index value according to the analysis result of the pulse change.
  • G of RGB face color information
  • analysis of changes in facial movement is performed as follows. That is, for each frame image, the face area is specified in the frame image, and the direction of the face is analyzed to analyze where the user is looking. For example, it analyzes whether the user is looking at the face of the speaker being displayed, whether the user is looking at the shared material being displayed, or whether the user is looking outside the screen. Further, it may be analyzed whether the movement of the face is large or small, or whether the movement is frequent or infrequent. The movement of the face and the movement of the line of sight may be analyzed together. For example, it may be analyzed whether the face of the speaker being displayed is viewed straight, whether the face is viewed with upward or downward gaze, or whether the face is viewed obliquely.
  • the biological reaction analysis unit 12 outputs a face orientation change index value according to the analysis result of the face orientation change.
  • Analysis of the contents of the statement is performed, for example, as follows. That is, the biological reaction analysis unit 12 converts the voice into a character string by performing known voice recognition processing on the voice for a specified time (for example, about 30 to 150 seconds), and morphologically analyzes the character string. By doing so, words such as particles and articles that are unnecessary for expressing conversation are removed. Then, vectorize the remaining words, analyze whether a positive emotional change has occurred, whether a negative emotional change has occurred, and to what extent the emotional change has occurred. Outputs the statement content index value.
  • Voice quality analysis is performed, for example, as follows. That is, the biological reaction analysis unit 12 identifies the acoustic features of the voice by performing known voice analysis processing on the voice for a specified time (for example, about 30 to 150 seconds). Then, based on the acoustic features, it analyzes whether a positive change in voice quality has occurred, whether a negative change in voice quality has occurred, and to what extent the change in voice quality has occurred, and according to the analysis results, output the voice quality change index value.
  • a specified time for example, about 30 to 150 seconds
  • the biological reaction analysis unit 12 uses at least one of the facial expression change index value, eye line change index value, pulse change index value, face direction change index value, statement content index value, and voice quality change index value calculated as described above. to calculate the biological reaction index value.
  • the biological reaction index value is calculated by weighting the facial expression change index value, eye line change index value, pulse change index value, face direction change index value, statement content index value, and voice quality change index value.
  • the peculiarity determination unit 13 determines whether or not the change in the analyzed biological reaction of the person to be analyzed is more specific than the change in the analyzed biological reaction of the person other than the person to be analyzed. In the present embodiment, the peculiarity determination unit 13 compares changes in the biological reaction of the person to be analyzed with those of others based on the biological reaction index values calculated for each of the plurality of users by the biological reaction analysis unit 12. is specific or not.
  • the peculiar determination unit 13 calculates the variance of the biological reaction index values calculated for each of the plurality of persons by the biological reaction analysis unit 12, and compares the biological reaction index values calculated for the analysis subject with the variance, It is determined whether or not the change in the analyzed biological reaction of the person to be analyzed is specific compared to others.
  • the following three patterns are conceivable as cases where the changes in biological reactions analyzed for the subject of analysis are more specific than those of others.
  • the first is a case where a relatively large change in biological reaction occurs in the subject of analysis, although no particularly large change in biological reaction has occurred in the other person.
  • the second is a case where a particularly large change in biological reaction has not occurred in the subject of analysis, but a relatively large change in biological reaction has occurred in the other person.
  • the third is a case where a relatively large change in biological reaction occurs in both the subject of analysis and the other person, but the content of the change differs between the subject of analysis and the other person.
  • the related event identification unit 14 identifies an event occurring in relation to at least one of the person to be analyzed, the other person, and the environment when the change in the biological reaction determined to be peculiar by the peculiarity determination unit 13 occurs. .
  • the related event identification unit 14 identifies from the moving image the speech and behavior of the person to be analyzed when a specific change in biological reaction occurs in the person to be analyzed.
  • the related event identifying unit 14 identifies, from the moving image, the speech and behavior of the other person when a specific change in the biological reaction of the person to be analyzed occurs.
  • the related event identification unit 14 identifies from the moving image the environment in which a specific change in the biological reaction of the person to be analyzed occurs.
  • the environment is, for example, the shared material being displayed on the screen, the background image of the person to be analyzed, and the like.
  • the clustering unit 15 clusters the change in the biological reaction determined to be specific by the peculiarity determination unit 13 (for example, one or a combination of eye gaze, pulse, facial movement, statement content, and voice quality), and the peculiarity Analyzing the degree of correlation with an event (event identified by the related event identification unit 14) that occurs when a change in biological reaction occurs, and if it is determined that the correlation is at a certain level or more , to cluster the subjects or events based on the correlation analysis results.
  • the peculiarity determination unit 13 for example, one or a combination of eye gaze, pulse, facial movement, statement content, and voice quality
  • the clustering unit 15 clusters the person to be analyzed or the event into one of a plurality of pre-segmented categories according to the content of the event, the degree of negativity, the magnitude of the correlation, and the like.
  • the clustering unit 15 clusters the person to be analyzed or the event into one of a plurality of pre-segmented classifications according to the content of the event, the degree of positivity, the degree of correlation, and the like.
  • the analysis result notification unit 16 reports at least one of the changes in the biological reaction determined to be specific by the peculiar determination unit 13, the event identified by the related event identification unit 14, and the classification clustered by the clustering unit 15. , to notify the designator of the subject of analysis (the subject of analysis or the organizer of the online session).
  • the analysis result notification unit 16 recognizes that when a change in a specific biological reaction that is different from that of the other person occurs in the person to be analyzed (one of the three patterns described above; the same applies hereinafter), the analysis target is Notifies the person to be analyzed of his/her own behavior. This allows the person to be analyzed to understand that he/she has a different feeling from others when he or she performs a certain behavior. At this time, the person to be analyzed may also be notified of the change in the specific biological reaction identified for the person to be analyzed. Furthermore, the person to be analyzed may be further notified of the change in the biological reaction of the other person to be compared.
  • the words and deeds of the person to be analyzed performed without being particularly conscious of their usual emotions, or the words and deeds of the person to be analyzed consciously accompanied by certain emotions, and the emotions and behaviors that others received
  • the emotion held by the person to be analyzed is different from the feeling held by the person to be analyzed at the time
  • the person to be analyzed is notified of the speech and behavior of the person to be analyzed at that time.
  • the analysis result notification unit 16 notifies the organizer of the online session of the event occurring when the person to be analyzed undergoes a specific change in biological reaction that is different from that of the other person, together with the change in the specific biological reaction. to notify.
  • the organizer of the online session can know what kind of event affects what kind of emotional change as a phenomenon specific to the specified analysis subject. Then, it becomes possible to perform appropriate treatment on the person to be analyzed according to the grasped contents.
  • the analysis result notification unit 16 notifies the organizer of the online session of the event occurring when a specific change in biological reaction occurs in the analysis subject, which is different from that of others, or the clustering result of the analysis subject. do.
  • online session organizers can grasp behavioral tendencies peculiar to analysis subjects and predict possible future behaviors and situations, depending on which classification the specified analysis subjects have been clustered into. be able to. Then, it becomes possible to take appropriate measures for the person to be analyzed.
  • the biological reaction index value is calculated by quantifying the change in biological reaction according to a predetermined standard, and the analysis subject is analyzed based on the biological reaction index value calculated for each of the plurality of people.
  • the biological reaction analysis unit 12 analyzes the movement of the line of sight for each of a plurality of people and generates a heat map indicating the direction of the line of sight.
  • the peculiar determination unit 13 compares the heat map generated for the person to be analyzed by the biological reaction analysis unit 12 with the heat map generated for the other person, so that the change in the biological reaction analyzed for the person to be analyzed It is determined whether it is specific compared with the change in biological response analyzed for.
  • moving images of a video session are stored in the local storage of the user terminal 10, and the above analysis is performed on the user terminal 10.
  • the machine specs of the user terminal 10 it is possible to analyze the moving image information without providing it to the outside.
  • the video session evaluation system of this embodiment may include a moving image acquisition unit 11, a biological reaction analysis unit 12, and a reaction information presentation unit 13a as functional configurations.
  • the reaction information presentation unit 13a presents information indicating changes in biological reactions analyzed by the biological reaction analysis unit 12, including participants not displayed on the screen.
  • the reaction information presenting unit 13a presents information indicating changes in biological reactions to an online session leader, moderator, or administrator (hereinafter collectively referred to as the organizer).
  • Hosts of online sessions are, for example, instructors of online classes, chairpersons and facilitators of online meetings, coaches of sessions for coaching purposes, and the like.
  • An online session host is typically one of the users participating in the online session, but may be another person who does not participate in the online session.
  • the organizer of the online session can also grasp the state of the participants who are not displayed on the screen in an environment where the online session is held by multiple people.
  • FIG. 5 is a block diagram showing a configuration example according to this embodiment. As shown in FIG. 5, in the video session evaluation system of the present embodiment, functions similar to those of the above-described first embodiment are given the same reference numerals, and description thereof may be omitted.
  • the system includes a camera unit that acquires images of a video session, a microphone unit that acquires audio, an analysis unit that analyzes and evaluates moving images, and information obtained by evaluating the acquired moving images.
  • an object generator for generating a display object (described below) based on the display; and a display for displaying both the moving image of the video session and the display object during execution of the video session.
  • the analysis unit includes the moving image acquisition unit 11, the biological reaction analysis unit 12, the peculiar determination unit 13, the related event identification unit 14, the clustering unit 15, and the analysis result notification unit 16, as described above.
  • the function of each element is as described above.
  • the object generation unit generates an object 50 representing the recognized face part and the above-mentioned Information 100 indicating the content of the analysis/evaluation performed is superimposed on the moving image and displayed.
  • the object 50 may identify and display all faces of a plurality of persons when the faces of the plurality of persons are moved in the moving image.
  • the object 50 is, for example, when the camera function of the video session is stopped at the other party's terminal (that is, it is stopped by software within the application of the video session instead of physically covering the camera). If the other party's face is recognized by the other party's camera, the object 50 or the object 100 may be displayed in the part where the other party's face is located. This makes it possible for both parties to confirm that the other party is in front of the terminal even if the camera function is turned off. In this case, for example, in a video session application, the information obtained from the camera may be hidden while only the object 50 or object 100 corresponding to the face recognized by the analysis unit is displayed. Also, the video information acquired from the video session and the information recognized by the analysis unit may be divided into different display layers, and the layer relating to the former information may be hidden.
  • the object 100 in this embodiment may be, for example, an icon corresponding to an emotion (smile icon, sadness icon, anger icon, surprise icon, etc.). Displaying such icons makes it easier to intuitively understand the other party's emotions. Also, as shown in FIG. 7, depending on the degree (intensity) of emotion expression, the number of corresponding icons may be increased, or the size of the corresponding icon may be increased (not shown). good too.
  • the objects 50 and 100 may be displayed in all areas or only in some areas. For example, as shown in FIG. 7, it may be displayed only on the moving image on the guest side.
  • the embodiments of the invention described in functional configuration example 1 to functional configuration example 3 described above may be implemented as a single device, or a plurality of devices (for example, cloud servers) partially or wholly connected by a network. and the like.
  • the control unit 110 and the storage 130 of each terminal 10 may be realized by different servers connected to each other via a network. That is, the system includes user terminals 10, 20, a video session service terminal 30 for providing an interactive video session to the user terminals 10, 20, and an evaluation terminal 40 for evaluating the video session, Variation combinations of the following configurations are conceivable. (1) Processing everything only on the user terminal As shown in FIG. 8, by performing the processing by the analysis unit on the terminal that is performing the video session (although a certain processing capacity is required), the video session can be performed.
  • an analysis unit may be provided in an evaluation terminal connected via a network or the like.
  • the moving images acquired by the user terminal are shared with the evaluation terminal at the same time as or after the video session, and are analyzed and evaluated by the analysis unit in the evaluation terminal.
  • the moving image data that is, information including at least analysis data
  • the moving image analysis system analyzes a moving image obtained by shooting a user in an environment where an online session is held by a plurality of users regardless of whether or not the user is displayed on the screen during the online session. It is a moving image analysis system that analyzes user reactions.
  • the system includes a character data storage section storing character data associated with predetermined characteristic parameters, and a character data storage section for registering a new character in the character data storage section.
  • a character data storage section storing character data associated with predetermined characteristic parameters
  • a character data storage section for registering a new character in the character data storage section.
  • the character data storage unit stores, for example, a base character set in advance for each predetermined categorized emotion (happiness, sadness, anger, anxiety, etc.; hereinafter referred to as an emotion parameter).
  • Character base information which is a parameter set
  • character emotion information which is an allowable emotional range for the character
  • character correction information which corrects the above-described parameter set and emotional range according to some condition, are associated with each other.
  • a character that is always prone to anger such as an animation character (that is, a character that is depicted as a character that is always prone to anger), has a high anger emotion parameter set in the parameter set of the character base information, and other characters.
  • Emotion parameters are set to average values.
  • each emotion parameter has a variable emotion range (corresponding to a measure of how angry a character gets angry). For example, in the case of the aforementioned character who easily gets angry, the condition of the lower limit and the upper limit of the emotion parameter of anger is set.
  • the emotion parameter of joy is corrected to be high.
  • the emotional parameters set for the character in the normal state usually prone, always kind, always cowardly, etc.
  • the emotional parameters under special circumstances when impressed, are more pleased than usual, praised, etc.
  • become more shy than usual, and calm down when asked, etc. can be set, and a variety of expressions are possible.
  • the character analysis unit analyzes the acquired analysis results and identifies characters from the character data storage unit that have combinations of emotional parameters close to the analysis results.
  • a character may be specified by analyzing each period of a moving image, or by analyzing an average value of analysis results of a certain moving image file.
  • the analysis result of the user for a certain period A is in the same state as the character A (the state in which changes in biological reactions similar to the emotional parameters associated with the character A are analyzed), and for another period B
  • the user's analysis result may be in a state similar to that of character B (a state in which changes in biological reactions similar to emotional parameters associated with character B have been analyzed).
  • characters according to the present embodiment include cartoons, movies, TV animations, actors, talents, celebrities, and any other fictional or real-life characters (personality). good too.
  • the character data registration section is for accepting registration of new characters.
  • the character data registration unit receives registration of associations between emotion parameters and characters from users. For example, by registering a new character for a target that cannot be specified by the character analysis section, it is possible to specify the target part as a character.
  • the character search unit when it receives a selection of a desired character from the user, it searches for and provides analysis results similar to the character data.
  • the information to be provided may be the analysis result itself or a moving image at that time. As a result, for example, it is possible to look back on things such as ⁇ Is there a time when I acted like character A?'' and ⁇ What was that behavior?''

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  • Engineering & Computer Science (AREA)
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  • Signal Processing (AREA)
  • Measurement Of The Respiration, Hearing Ability, Form, And Blood Characteristics Of Living Organisms (AREA)
  • Measuring Pulse, Heart Rate, Blood Pressure Or Blood Flow (AREA)
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  • Management, Administration, Business Operations System, And Electronic Commerce (AREA)

Abstract

Le problème décrit par la présente invention concerne l'évaluation objective des communications en ligne, qui sont devenues courantes. La solution selon la présente invention concerne un système comprenant : une unité d'acquisition vidéo qui acquiert une vidéo obtenue en enregistrant des utilisateurs pendant une réunion vidéo ; une unité d'analyse qui analyse les changements des réactions biologiques des utilisateurs sur la base de la vidéo acquise par l'unité d'acquisition vidéo ; une unité de stockage de données de caractères qui stocke des données de caractères auxquelles des paramètres de caractéristiques spécifiques ont été associés ; une unité d'analyse de caractères qui spécifie les données de caractères les plus proches en analysant le résultat de l'analyse et les paramètres de caractéristiques ; et une unité de présentation de données de caractères qui présente les données de caractères.
PCT/JP2021/038122 2021-10-14 2021-10-14 Système d'analyse vidéo WO2023062793A1 (fr)

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JP2022517950A JP7145556B1 (ja) 2021-10-14 2021-10-14 動画像分析システム
JP2022144275A JP2023059238A (ja) 2021-10-14 2022-09-12 ビデオミーティング評価端末

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Citations (4)

* Cited by examiner, † Cited by third party
Publication number Priority date Publication date Assignee Title
US20120290508A1 (en) * 2011-05-09 2012-11-15 Anurag Bist System and Method for Personalized Media Rating and Related Emotional Profile Analytics
JP2018505462A (ja) * 2014-12-11 2018-02-22 インテル コーポレイション アバター選択機構
JP2020123884A (ja) * 2019-01-31 2020-08-13 富士通株式会社 集中度評価プログラム、装置、及び方法
JP2021022909A (ja) * 2019-07-30 2021-02-18 株式会社リコー 情報処理装置、情報処理プログラム、情報処理システム、情報処理方法

Patent Citations (4)

* Cited by examiner, † Cited by third party
Publication number Priority date Publication date Assignee Title
US20120290508A1 (en) * 2011-05-09 2012-11-15 Anurag Bist System and Method for Personalized Media Rating and Related Emotional Profile Analytics
JP2018505462A (ja) * 2014-12-11 2018-02-22 インテル コーポレイション アバター選択機構
JP2020123884A (ja) * 2019-01-31 2020-08-13 富士通株式会社 集中度評価プログラム、装置、及び方法
JP2021022909A (ja) * 2019-07-30 2021-02-18 株式会社リコー 情報処理装置、情報処理プログラム、情報処理システム、情報処理方法

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