Target tracking method based on novel response graph fusion

A technology of target tracking and fusion method, which is applied in the field of target tracking based on the fusion of new response graphs, can solve problems such as non-robustness and bounding box drift, and achieve enhanced position information interaction, increased robustness, and improved accuracy Effect

Pending Publication Date: 2020-04-17
TIANJIN UNIV
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AI Technical Summary

Problems solved by technology

[0005] However, in the current target tracking method based on the depth regression model, the traditional response map fusion method used is a simple addition or multiplication fusion method. Complex challenging situations are not robust and can easily cause bounding box drift problems

Method used

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  • Target tracking method based on novel response graph fusion
  • Target tracking method based on novel response graph fusion
  • Target tracking method based on novel response graph fusion

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Embodiment Construction

[0016] A target tracking method based on novel response map fusion of the present invention will be described in detail below with reference to the embodiments and drawings.

[0017] Such as figure 1 As shown, a kind of target tracking method based on novel response map fusion of the present invention, comprises the following steps:

[0018] 1) Centering on the position of the target object in the given first frame, cut out a search area block, and use the Gaussian function to generate the corresponding training marker map, and carry out the training of the depth regression model, and iteratively train the depth regression model through the gradient descent method so that The preset loss function is the smallest, and the trained deep regression model is obtained; among them,

[0019] (1) described using Gaussian function to generate corresponding training mark map is to adopt following formula:

[0020]

[0021] where x 0 、y 0 is the horizontal and vertical coordinates ...

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Abstract

The invention discloses a target tracking method based on novel response graph fusion, and the method comprises the steps: taking the position of a given first frame of target object as the center, cutting out a search region block, generating a corresponding training mark graph, carrying out the training of a depth regression model, enabling a preset loss function to be minimum, and obtaining a trained depth regression model; taking the position of the target object predicted by the previous frame as the center, cutting out search area blocks with the same size, inputting the search area blocks into the trained depth regression model, generating a final response graph through feature extraction and response graph fusion, and enabling the maximum value of the response graph to represent the position of the predicted target object; after the position of the target object is obtained, performing scale estimation on the size of the target object; and updating the depth regression model according to the search area block of the historical frame and the corresponding training mark graph, and repeating the above steps to predict the position and size of the target in each subsequent frame. According to the invention, the target position can be positioned more accurately, so that the target tracking accuracy is improved.

Description

technical field [0001] The invention relates to a target tracking method. In particular, it concerns an object tracking method based on novel response map fusion. Background technique [0002] Object tracking is a promising but difficult field of research in computer vision algorithms that has won widespread acclaim for its wide range of applications in autonomous driving, traffic flow monitoring, surveillance and security, human-computer interaction, and medical diagnostic systems. Object tracking is an active research area in computer vision due to opportunities and different tracking challenges. In the past decades, many research teams have made great efforts, but object tracking still has great potential to be further explored. The difficulty of object tracking lies in countless challenges, such as occlusion, background clutter, illumination changes, scale changes, low resolution, fast motion, loss of sight, motion blur, deformation. [0003] Discriminative correlatio...

Claims

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Application Information

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Patent Type & Authority Applications(China)
IPC IPC(8): G06K9/62
CPCG06V2201/07G06F18/214G06F18/25
Inventor 刘安安张春婷刘婧苏育挺
Owner TIANJIN UNIV
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