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Correlation filtering tracking algorithm based on significance detection and robustness scale estimation

A technology of scale estimation and correlation filtering, applied in the field of target tracking based on correlation filtering, which can solve problems such as lack of prior information, complex and diverse causes, and occlusion identification

Inactive Publication Date: 2017-11-17
WUHAN UNIV
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AI Technical Summary

Problems solved by technology

The occlusion problem has always been a difficult problem in tracking. Its causes are complex and diverse, and there is no prior information. In addition, it is difficult to identify the occlusion itself
Therefore, it is necessary to estimate the changes of the length and width of the target separately, but no one has realized it based on the correlation filter.

Method used

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  • Correlation filtering tracking algorithm based on significance detection and robustness scale estimation
  • Correlation filtering tracking algorithm based on significance detection and robustness scale estimation
  • Correlation filtering tracking algorithm based on significance detection and robustness scale estimation

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Embodiment Construction

[0023] Correlation filters have been used in the field of object tracking in recent years due to their high computational efficiency. But using cyclic movement to approximate the actual movement of the target, there is no one-to-one correspondence between the two when the target is occluded. Coupled with changes in the appearance of the target, the difficulty of tracking is greatly increased. Therefore, the present invention introduces saliency information to increase the difference between the target and the background. In addition, for scale estimation in the tracking process, the target does not only change in size, but also generally deforms. It is not enough and inaccurate to use only one-dimensional data to estimate the scale of the target. Therefore, the present invention estimates the scale of the target from two dimensions based on the two-dimensional correlation filter to improve the accuracy. Therefore, the present invention proposes a correlation filter tracking ...

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Abstract

The invention relates to a correlation filtering tracking algorithm based on significance detection and robustness scale estimation. The method comprises steps that filter training, and a cycle matrix training filter is constructed through utilizing the target prior information; significance detection, l2 regularized constraints of an original regularized ridge regression problem are converted into l2 and 1 constraints; secondly, a significance area is extracted from a candidate area through utilizing boolean map saliency (BMS); target position prediction, relevant filtering is carried out for a sample containing the significance information, the maximum value of a filter response map corresponds to the position of a target, and parameters of the filter are updated; robustness scale estimation, two-dimensional scale change of the target in length and width can be acquired through a two-dimensional scale filter. The method is advantaged in that significance detection is introduced under the relevant filter framework, scale change of the target can be acquired through employing the two-dimensional scale filter, and tracking accuracy and the success rate are improved.

Description

technical field [0001] The invention belongs to the field of image processing, in particular to target tracking based on correlation filtering. Background technique [0002] As an important research direction in the field of computer vision, target tracking refers to the analysis of a series of continuous video images acquired by visual sensors such as cameras to obtain the position, size, and motion status of a specific target or multiple targets. Useful information. A basic vision tracking, the goal is to use the initialization labeled object box to predict the trajectory after the object in the image sequence. In the tracking process, due to some external factors, such as illumination changes, shooting angle changes, target occlusion, etc., the main challenges in the current tracking are: the deformation of the target due to its own motion or external factors, and being blocked by other objects during motion. , changes in scene illumination and motion blur caused by tar...

Claims

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Application Information

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Patent Type & Authority Applications(China)
IPC IPC(8): G06T7/246G06T7/262G06T3/40
CPCG06T3/4007G06T7/246G06T7/262G06T2207/10016
Inventor 杨文尹雪珂余淮王金旺
Owner WUHAN UNIV
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