Object tracing method based on active scene learning

An object tracking and scene technology, applied in the fields of instruments, character and pattern recognition, computer parts, etc., can solve the problems of insufficient learning, difficult recovery, lost targets, etc.

Inactive Publication Date: 2012-10-10
SOUTHWEST JIAOTONG UNIV
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AI Technical Summary

Problems solved by technology

At the same time, a motion region analysis and extraction method based on optical flow analysis is proposed, and according to the above structural constraints, it can effectively

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  • Object tracing method based on active scene learning
  • Object tracing method based on active scene learning
  • Object tracing method based on active scene learning

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Embodiment Construction

[0066] The method of the invention can be used in various occasions of object tracking, such as intelligent video analysis, automatic human-computer interaction, traffic video monitoring, unmanned vehicle driving, biological group analysis, and fluid surface velocity measurement.

[0067] Take intelligent video analysis as an example: intelligent video analysis includes many important automatic analysis tasks, such as object behavior analysis, video compression, etc., and the basis of these works is the ability to perform long-term stable object tracking. Therefore, for the video object of interest in the intelligent analysis process, according to the active scene learning method and tracking method proposed by the present invention, not only can realize the long-term tracking task in an unconstrained environment, but also can analyze and process the entire video scene , while completing the basic tracking, the learned scene information can further enhance the system's ability ...

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Abstract

The invention provides an object tracing method based on active scene learning, belonging to the technical field of computer graphics and image mode identification. The difficulty needing to be confronted all together is to not only guarantee the adaption ability of a tracing system to the target change, but also guarantee the learning accuracy to avoid shifting to result in tracing failure. According to the invention, the object tracing is achieved by the steps of online modeling, short-time tracing, overall detection, active scene learning, a constraint method, analysis and extraction of a motion area and the like. By learning a scene online, the background information can be found actively, meanwhile, the motion area analysis and extraction method based on light streams is provided, and the problem of target loss and difficulty in recovering the target, resulting from rapid movement of an objected or severe movement of the scene, can be effectively solved according to the structured constraint. The adaption ability to the target change can be effectively improved, so that the long-time stable rapid object tracing can be achieved, and the object tracing method is mainly applied to various object tracing occasions.

Description

technical field [0001] The invention belongs to the technical field of computer graphic image pattern recognition, in particular to machine learning and computer vision technology. Background technique [0002] Achieving long-term visual tracking in an unconstrained environment is a key issue for numerous computer vision applications, such as video surveillance, human-computer interaction, etc. At present, the tracking method based on machine learning, especially online learning, has become a research hotspot in this field, because in order to obtain long-term stable and reliable tracking performance, the tracking system needs to be able to adapt to the movement changes of the target object. [0003] The purpose of online learning in the tracking process is to discover the unknown data structure, study it, and gradually develop a series of adaptive object tracking methods. Graber, Avidan, Collins, and Lim et al. adopted different self-learning methods to update the object m...

Claims

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Application Information

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IPC IPC(8): G06K9/62
Inventor 权伟陈锦雄余南阳
Owner SOUTHWEST JIAOTONG UNIV
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