Visual multi-target tracking method based on multiple single trackers

A multi-target tracking and tracker technology, applied in the field of visual multi-target tracking, can solve the problems of inseparable from the data association process, less than 5 frames per second, huge computing load of data association, etc., to avoid tracking data association, The effect of reducing tracking cumulative error and reducing cumulative error

Active Publication Date: 2018-11-30
XIDIAN UNIV
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AI Technical Summary

Problems solved by technology

The existing visual multi-target tracking algorithms are basically inseparable from the data association link. First, the target classifier is used to detect and obtain the target, and then the target is tracked and associated based on the data association algorithm to achieve multi-target tracking. Huge computing load, unable to meet the requirements of multi-target real-time tracking
There are several multi-target tracking methods that use the confidence of tracking segments and discriminative appearance learning. This method performs local data association between tracking segments and detection results or global data association between tracking segments based on the confidence of tracking segments. Appearance module learning to distinguish different objects in the tracking process; this method is also inseparable from the data association process, and its tracking frame rate is usually lower than 5 frames per second; In this situation, the appearance of the target changes significantly, and it

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  • Visual multi-target tracking method based on multiple single trackers
  • Visual multi-target tracking method based on multiple single trackers
  • Visual multi-target tracking method based on multiple single trackers

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Embodiment Construction

[0056] Such as figure 1 As shown, a flow chart of visual multi-target tracking based on multiple single trackers is characterized by:

[0057] Step 1, use the target classifier to perform target detection on the image, and obtain the target detection result;

[0058] Step 2, according to the target detection result in step 1, assign a visual single target tracker to each target, and track the targets simultaneously;

[0059] Step 3, enter multiple single target tracker update cycles, delete the tracker of the target that escaped from the field of view;

[0060] Step 4, enter the multi-tracker refresh and consistency judgment cycle, maintain tracking and assign new trackers to newly born targets.

[0061] figure 1 Step 1 in the process of the embodiment specifically includes the following steps: figure 2 as shown,

[0062] Step 11, open a video file to be tracked;

[0063] Step 12, establishing target counter and frame counter;

[0064] Step 13, read in a frame of image...

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Abstract

The invention discloses a visual multi-target tracking method based on multiple single trackers. The visual multi-target tracking method comprises the steps that targets are detected based on a classifier and are tracked through the multiple visual single-target trackers, the targets and the trackers are corrected through different strategies during tracing, and thus the multiple targets are tracked continuously; specifically, firstly, the target classifier is utilized to detect images so as to obtain the targets, then one visual single-target tracker is assigned to each target, and the multiple visual single-target trackers are utilized to jointly complete the task of multi-target tracking; and in order to deal with the cumulative error of the trackers, targets escaping from the view during tracking and new targets, the update cycle for the multiple single-target trackers and the multi-tracker consistency judgment cycle are introduced, thus adaptive management such as update and consistency judgment is conducted cyclically on the multiple single-target trackers, and the multiple targets are effectively tracked. According to the visual multi-target tracking method, the tracking efficiency is greatly improved, and the requirement for multi-target real-time tracking is basically met.

Description

technical field [0001] The invention belongs to the field of visual multi-target tracking, in particular to a visual multi-target tracking method based on multiple single trackers. Background technique [0002] Visual multi-target tracking technology is one of the key technologies of computer vision. It is widely used in video surveillance, disaster scene search and rescue, military target strike and emerging automatic driving and other fields. [0003] At present, the vast majority of research at home and abroad is on visual single-target tracking, and there are relatively few researches on visual multi-target tracking. The existing visual multi-target tracking algorithms are basically inseparable from the data association link. First, the target classifier is used to detect and obtain the target, and then the target is tracked and associated based on the data association algorithm to achieve multi-target tracking. The huge computing load cannot meet the requirements of mu...

Claims

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Application Information

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IPC IPC(8): G06T7/277G06K9/62
CPCG06T7/277G06T2207/10016G06F18/24
Inventor 刘贵喜武治宇冯煜秦耀龙
Owner XIDIAN UNIV
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