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Method, device and medium for acquiring face recognition model training data based on video

A face recognition and model training technology, applied in the field of obtaining face recognition model training data, can solve the problems of uneven quality of star pictures, low efficiency, photos that do not conform to model training, etc., so as to alleviate the problem of repeated recognition and reduce repetition. The effect of the video frame

Active Publication Date: 2020-03-03
BEIJING YINGPU TECH CO LTD
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  • Summary
  • Abstract
  • Description
  • Claims
  • Application Information

AI Technical Summary

Problems solved by technology

Either way, manual participation is required, and there are respective defects: the quality of star pictures obtained in the network gallery is uneven, and many photos do not meet the needs of model training. More importantly, the most original recorder When entering a picture into a search engine, the entrant will set keywords based on some information of the picture. For example, if the description information of a picture to be entered is "Star A and Star B promote the new drama XX", there may be only Celebrity B, without Celebrity A, but the description information of the picture includes keywords: Celebrity A's "name"
If the model is trained directly with the retrieval results, the model parameters will be inaccurate. If the image is recognized manually, the quality can be guaranteed but the efficiency is low.

Method used

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  • Method, device and medium for acquiring face recognition model training data based on video
  • Method, device and medium for acquiring face recognition model training data based on video
  • Method, device and medium for acquiring face recognition model training data based on video

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Embodiment 1

[0046] According to the embodiment of the present application, an embodiment of a method for acquiring face recognition model training data based on video is also provided. It should be noted that the steps shown in the flow chart of the accompanying drawings can be executed in a set of computer-executable instructions such as and, although a logical order is shown in the flowcharts, in some cases the steps shown or described may be performed in an order different from that shown or described herein.

[0047] The method embodiment provided in Embodiment 1 of the present application may be executed in a mobile terminal, a computer terminal, or a similar computing device. figure 1 A hardware structure block diagram of a computer device (or mobile device) used in the method of the present application is shown. Such as figure 1 As shown, the computer device 10 (or mobile device 10) may include one or more processors (102a, 102b, ..., 102n are used in the figure to show that the p...

Embodiment 2

[0081] In an optional embodiment, the present application also provides a method for acquiring face recognition model training data based on video. The method can include:

[0082] Standard image processing step: acquiring two or more standard images from different angles of the person to be identified, performing face detection and key point extraction on the standard images respectively, and generating a first descriptor set;

[0083] Video processing step: for the video containing the person, extract the video frame, identify the human face part in the extracted video frame, and save the human face part as a human face picture;

[0084] Image comparison step: extracting key points from the face image, generating a second descriptor, calculating the distance between each first descriptor and second descriptor in the first descriptor set, and judging the person based on the distance Whether the face picture is the person to be recognized, so as to obtain the face recognition...

Embodiment 3

[0089] In an optional embodiment, the present application also provides a method for acquiring face recognition model training data based on video. The method can include:

[0090] Standard image processing step: acquiring two or more standard images of persons to be identified, performing face detection and key point extraction on the standard images respectively, and generating a first descriptor set;

[0091] Video processing step: for the video containing the person, extract the video frame, identify the human face part in the extracted video frame, and save the human face part as a human face picture;

[0092] Image comparison step: extracting key points from the face image, generating a second descriptor, calculating the distance between each first descriptor and second descriptor in the first descriptor set, and judging the person based on the distance Whether the face picture is the person to be recognized, so as to obtain the face recognition model training data.

...

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Abstract

The present application discloses a method, device and medium for acquiring face recognition model training data based on video. Wherein, the method includes: obtaining a standard picture of the person to be identified, performing face detection and key point extraction on the standard picture, and generating a first descriptor; for a video containing the person, performing video frame extraction, and identifying the extracted video The face part in the frame, save the face part as a face picture; carry out key point extraction to the face picture, generate the second descriptor, calculate the distance between the first descriptor and the second descriptor, based on the The distance is used to judge whether the face picture is the person to be recognized, so as to obtain the face recognition model training data. This method can enrich the training data of the face recognition model, reduce the workload of manual screening, and thus solve the problems of incomplete training data preparation, single type, and difficult cleaning.

Description

technical field [0001] The present application relates to the technical field of image data processing, in particular to a method and device for obtaining face recognition model training data from videos. Background technique [0002] The training of face recognition models, especially celebrity face recognition models, usually requires the preparation of a large amount of training data. Generally, each star training needs about 500 to 1000 pictures to achieve better accuracy. In addition, the star ranking changes very frequently, and the existing star recognition model needs to be continuously expanded or updated. This is a serious challenge for data preparation. [0003] There are usually two methods to find the training data of faces, especially the faces of celebrities, one is to collect in the network gallery, and the other is to take screenshots in film and television dramas. Either way, manual participation is required, and there are respective defects: the quality...

Claims

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Application Information

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Patent Type & Authority Patents(China)
IPC IPC(8): G06K9/00
CPCG06V40/168G06V40/172G06V20/40
Inventor 秦浩达
Owner BEIJING YINGPU TECH CO LTD
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