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Multi-target Tracking Algorithm Based on ReInspect Algorithm |
WANG Wen-yuan,JIN Xuan-hong,SONG Wen-jing,WANG Yi-wei |
School of Optical-Electrical and Computer Engineering, University of Shanghai for Science and Technology, Shanghai 200093, China |
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Abstract In order to improve the accuracy of multi-target detection in complex scenes,a detection method for multiple moving objects based on ReInspect algorithm is proposed. The algorithm is based on the OverFeat algorithm and Faster R-CNN algorithm, adding LSTM (long short-term memory)recurrent network structure to record the feature sequence of multiple targets. By adjusting the LSTM network feature label information to preprocess the loss function, and the confidence segmentation method is used after tracking to match the detection results to solve the problem of repeated detection of the same target and target occlusion. The experimental results show that the algorithm has good anti-interference ability against traditional overlapping and occlusion problems, and the recognition accuracy is higher than 90% in different scenarios.
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Received: 23 July 2020
Published: 08 April 2022
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