A target tracking method based on online learning

A target tracking and target technology, which is applied in the field of target tracking based on online learning, can solve problems such as filter pollution, and achieve the effect of avoiding positioning drift and learning occlusion information.

Active Publication Date: 2022-08-05
HOHAI UNIV
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AI Technical Summary

Problems solved by technology

However, the prediction results generated by the common batch learning method are only based on the once-determined training data set.
[0004] In the process of target tracking, when the target is occluded, the traditional filter still learns the information of the occluder at a fixed model update rate, resulting in the filter being polluted

Method used

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  • A target tracking method based on online learning
  • A target tracking method based on online learning
  • A target tracking method based on online learning

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Embodiment Construction

[0074] The following combined with the attachment and embodiments to further explain the technical solution of the present invention.

[0075] A method -based target tracking method described in the present invention, such as figure 1 It includes the following steps:

[0076] 101. According to the initial state given by the target given by the first frame of the video, determine the initial position of the target 1 And the target candidate area in the next frame; the target candidate area refers to the initial position of the target P 1 Centered, the rectangular area with M width is N;

[0077] 102. Protect the characteristic candidate area of ​​the target candidate in step 101 to get the characteristics of the characteristics X 1 Pheasant M×N×D Among them, R M×N×D The dimension of the characteristic; in this embodiment, d = 31;

[0078] 103. Each image of each frame corresponds to one model, which is the amount of features X 1 The amount of weight with the same dimension, and is ...

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Abstract

The invention discloses a target tracking method based on online learning. The method comprises the following steps: initializing the target, initializing the basic information of the target by tracking the target position and size given in the first frame of the video; extracting features, extracting the feature information of the given target ;Model initialization, use the first frame target features to train the initial model; candidate area, obtain the possible position of the current frame target according to the target position of the previous frame; Feature extraction, perform feature extraction on the target candidate area; target positioning, the model determines that the target is in the candidate The precise location of the area; model update, using online learning to update model parameters to adapt to changes in the appearance of the target; the target tracking method of the present invention provides a model adaptive update method, which can effectively reduce the drastic changes of the model, Prevent tracking frame drift and increase tracking stability.

Description

Technical field [0001] The present invention is an online learning field and a single target tracking field, especially a target tracking method based on online learning. Background technique [0002] The discriminating target tracking method turns tracking problems into a classification problem, and distinguish between targets and backgrounds through training classifiers. In the current frame, the target area is a positive sample, the background area is the negative sample, and the target and background are judged by the online training classifier through the machine learning method. The next frame uses a trained classifier to find the optimal area. The algorithm uses sample image training filter to establish a target appearance model. In the first frame, the primary target window and random imitation transform are performed. A set of sample images are used to train the filter. Then in the subsequent frames The window performs related operations, and finds the maximum value posi...

Claims

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Application Information

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Patent Type & Authority Patents(China)
IPC IPC(8): G06T7/207G06T7/246
CPCG06T7/207G06T7/251G06T2207/10016G06T2207/20081G06T2207/20056
Inventor 孙浩韩立新徐国夏
Owner HOHAI UNIV
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