Multi-level characteristic data association-based multi-target visual tracking method

A feature data, visual tracking technology, applied in the direction of TV, color TV, closed-circuit TV system, etc., can solve the problem of affecting the tracking effect, high hardware environment requirements, unable to achieve accurate tracking, etc., to improve accuracy and promote development. , the effect of improving the accuracy

Active Publication Date: 2013-09-04
TIANJIN UNIV
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Problems solved by technology

In the process of multi-target movement, the occlusion between objects will greatly affect the tracking effect, and the addition of color features solves the partial occlusion problem, but a single feature application still cannot meet the requ

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  • Multi-level characteristic data association-based multi-target visual tracking method
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  • Multi-level characteristic data association-based multi-target visual tracking method

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Embodiment Construction

[0024] The invention belongs to the field of security monitoring visualization, and relates to an algorithm for multi-level feature correlation calculation. It mainly includes the following steps: acquiring a target object, separating the target from the video scene background as a tracking target (represented by a rectangular frame); establishing a target model, Extract the global features and local features of the target as the characteristics of the target object model; the correlation calculation is based on the target similarity, the texture similarity and the local color similarity, and the correlation is calculated from the two levels of the global feature and the local feature Matching strategy; processing target occlusion, using occlusion judgment mechanism (using Karman filter algorithm to process large-area occlusion, removing occlusion block method to process small-area occlusion); obtain target trajectory, and obtain longer and more accurate targets according to the ...

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Abstract

The invention belongs to the field of security and protection monitoring and relates to a multi-level characteristic data association-based method for detecting and tracking multiple targets in a monitored scene by adopting a multi-target visual tracking algorithm. The method comprises the following steps: acquiring target objects, and extracting targets from a video scene background to serve as to-be-tracked objects; establishing target models, extracting global features and local features of the targets to serve as features of described target object models, and removing the targets with very low matching degree by filtering; performing association calculation by taking target similarity, texture similarity and local color similarity as the basis, and performing a matching strategy from two levels of the global features and the local features; processing target occlusion by adopting an occlusion judging mechanism; and obtaining target trajectories which are longer and comparatively accurate according to an association algorithm of subsequent iteration. According to the method provided by the invention, not only is the accuracy of target tracking improved but also the occlusion issue among the targets is effectively solved. Compared with an association tracking algorithm only using overall feature modeling, the method provided by the invention is higher in accuracy.

Description

Technical field [0001] The invention belongs to the field of security monitoring and computer vision, and relates to a method for detecting and tracking multiple targets in a monitoring scene based on a multi-target visual tracking algorithm based on multi-level feature data association. Background technique [0002] In recent years, with the continuous development of security monitoring technology, the application of video monitoring in social life has become more and more extensive, and the requirements for monitoring systems in traffic management, traffic accident analysis, community security, bank monitoring, and social stability are constantly increasing. Target tracking is the core function of intelligent video surveillance. By tracking the monitored target, its motion trajectory can be obtained or its motion behavior can be further analyzed to provide reliable support for intelligent monitoring. [0003] At present, target tracking algorithms have been widely used in actual ...

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Application Information

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IPC IPC(8): H04N5/14H04N7/18
Inventor 张加万张怡陈锦言何佳凝
Owner TIANJIN UNIV
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