Pedestrian re-identification method based on multi-component self-attention mechanism
The invention provides a pedestrian re-identification method based on a multi-component self-attention mechanism. The method comprises the following steps: firstly, pre-training a deep convolutional neural network backbone model; then, after the backbone model is branched, a multi-component self-att...
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creator | LU YI XU XIAOGANG ZHANG YI YE XIYONG ZHANG WENGUANG ZHU MINHANG |
description | The invention provides a pedestrian re-identification method based on a multi-component self-attention mechanism. The method comprises the following steps: firstly, pre-training a deep convolutional neural network backbone model; then, after the backbone model is branched, a multi-component self-attention network is constructed, and multi-component self-attention characteristics are obtained; inputting the multi-component self-attention features into a classifier, and performing joint training to minimize cross entropy loss and metric loss; and finally, inputting a test set picture into the trained model, fusing the output part features to obtain an overall feature, and realizing pedestrian re-identification through metric sorting. According to the method, various challenges existing in the pedestrian re-identification problem are fully considered, a multi-component self-attention mechanism is provided, the attention activation area is effectively expanded, and pedestrian features areenriched; the self-attent |
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The method comprises the following steps: firstly, pre-training a deep convolutional neural network backbone model; then, after the backbone model is branched, a multi-component self-attention network is constructed, and multi-component self-attention characteristics are obtained; inputting the multi-component self-attention features into a classifier, and performing joint training to minimize cross entropy loss and metric loss; and finally, inputting a test set picture into the trained model, fusing the output part features to obtain an overall feature, and realizing pedestrian re-identification through metric sorting. 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The method comprises the following steps: firstly, pre-training a deep convolutional neural network backbone model; then, after the backbone model is branched, a multi-component self-attention network is constructed, and multi-component self-attention characteristics are obtained; inputting the multi-component self-attention features into a classifier, and performing joint training to minimize cross entropy loss and metric loss; and finally, inputting a test set picture into the trained model, fusing the output part features to obtain an overall feature, and realizing pedestrian re-identification through metric sorting. According to the method, various challenges existing in the pedestrian re-identification problem are fully considered, a multi-component self-attention mechanism is provided, the attention activation area is effectively expanded, and pedestrian features areenriched; the self-attent</abstract><oa>free_for_read</oa></addata></record> |
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language | chi ; eng |
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subjects | CALCULATING COMPUTER SYSTEMS BASED ON SPECIFIC COMPUTATIONAL MODELS COMPUTING COUNTING HANDLING RECORD CARRIERS PHYSICS PRESENTATION OF DATA RECOGNITION OF DATA RECORD CARRIERS |
title | Pedestrian re-identification method based on multi-component self-attention mechanism |
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