Attributive characteristic representation-based group behavior identification method

A technology of attribute characteristics and recognition methods, applied in character and pattern recognition, instruments, computer components, etc., can solve problems such as limited application occasions, complex preprocessing, large preprocessing work, etc., to achieve good recognition of group behavior and simple implementation , the effect of good resolution

Inactive Publication Date: 2015-10-07
NANJING UNIV OF POSTS & TELECOMM
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Problems solved by technology

Kong Yu applied the attribute to the group behavior recognition method, although it has achieved good results, but it needs to track each person in the interaction behavior, which requires a lot of preprocessing work, and the identification used The model is very complex, parameter adjustment is cumbersome, and it is difficult to achieve real-time performance in practical applications, which will limit its application occasions
[0004] For complex group behavior recognition, the traditional method has the disadvantages of complex preprocessing and high model complexity.

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  • Attributive characteristic representation-based group behavior identification method
  • Attributive characteristic representation-based group behavior identification method
  • Attributive characteristic representation-based group behavior identification method

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[0042] The technical scheme of the present invention will be further described in detail below in conjunction with the accompanying drawings:

[0043] Such as figure 1 As shown, the present invention discloses a group behavior recognition method based on attribute feature representation, including the following steps:

[0044] Step 1), build a feature dictionary of the video;

[0045] Step 1.1), divide the original video sequence in the database into a series of videos containing 10 frames, and divide all the videos into two parts: training video and test video. For each frame of picture, it should be divided into grids of the same size and two disjoint, grid size is 40*40. The grids at the same position in each frame of the video are combined together in the time direction to form a grid cube with a size of 40*40*10.

[0046] Step 1.2), posture is a structural relationship of each joint node of the human body. Nodes with different structural relationships can form different postures...

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Abstract

The invention discloses an attributive characteristic representation-based group behavior identification method, and mainly solves the problems that in an identification process, preprocessing is complicated and later-period modeling is complicated. The identification process includes acquisition of a characteristic dictionary, acquisition of a video attribute vector and test video behavior prediction. The method includes: dividing an original video sequence into videos containing certain frames, dividing the videos into grid cubes, and extracting grid cube descriptors to obtain the characteristic dictionary; obtaining the descriptors of the videos according to the dictionary, calibrating an attribute vector of trained videos, obtaining an attribute classification model according to the trained videos, and predicting to obtain a test video attribute vector; and using the trained videos to learn and obtain classification models of different actions, and predicting the action type of test videos. The method neither needs to track a human body nor performs attitude estimation, thereby enabling group behavior identification to become simple and practical, and an identification effect is good at the same time, and thus the method has important application in video monitoring.

Description

Technical field [0001] The invention relates to the field of image processing and pattern recognition, in particular to a group behavior recognition method based on attribute feature representation. Background technique [0002] In recent years, due to the increasing demand for video supervision, human-computer interaction, and video-based content retrieval, human behavior recognition has gradually become one of the research hotspots in computational vision and pattern recognition. Current human behavior recognition algorithms are still focused on the recognition and understanding of standard postures and simple behaviors of the human body. In recent years, research on building human behavior models using machine learning tools has made certain progress. But now the recognition is better only on some simple behaviors. For complex group behaviors, there is no simple framework, low model complexity, and easy-to-implement methods. The future development trend is how to use advanced...

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Application Information

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IPC IPC(8): G06K9/00
CPCG06V20/41G06V20/53
Inventor 陈昌红豆贺贺干宗良
Owner NANJING UNIV OF POSTS & TELECOMM
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