Abstract

The recognition accuracy of the pedestrian re-identification algorithm is affected by factors such as the scale, posture, occlusion level, and appearance of a pedestrian in an image. These factors bring great challenges to the further development of deep learning theory in the field of person re-identification. On the one hand, existing pedestrian re-identification model cannot accurately extract attention information containing contextual information and discriminative pedestrian features. On the other hand, images of the same pedestrian taken with different cameras have the problem of different degrees of occlusion. Therefore, we introduce an attention pooling mechanism, which allows the model to automatically focus on discriminative regions of pedestrian images. The model can then learn attention maps by automatically focusing on visually salient pedestrian regions. It can effectively address the influence of factors on the accuracy of pedestrian re-identification. Furthermore, we propose a pedestrian re-identification method based on saliency region detection and matching. The method first extracts multiple local saliency regions from pedestrian images using the pedestrian joint point detection method, then marks and extracts the positions of the abovementioned saliency regions, and finally performs matching and sorting. It can correct the impact caused by occlusion on the accuracy of pedestrian re-identification. We conduct tests and experiments on three public person re-identification datasets, and the results show that our method not only achieves the best recognition accuracy on the aforementioned datasets but also has better robustness.

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