Abstract

Cross-modality person re-identification is the study of images of people matching under different modalities (RGB modality, IR modality). Given one RGB image of a pedestrian collected under visible light in the daytime, cross-modality person re-identification aims to determine whether the same pedestrian appears in infrared images (IR images) collected by infrared cameras at night, and vice versa. Cross-modality person re-identification can solve the task of pedestrian recognition in low light or at night. This paper aims to improve the degree of similarity for the same pedestrian in two modalities by improving the feature expression ability of the network and designing appropriate loss functions. To implement our approach, we introduce a deep neural network structure combining heterogeneous center loss (HC loss) and a non-local mechanism. On the one hand, this can heighten the performance of feature representation of the feature learning module, and, on the other hand, it can improve the similarity of cross-modality within the class. Experimental data show that the network achieves excellent performance on SYSU-MM01 datasets.

Highlights

  • The evaluation indexes that are widely used in person re-identification are CMC, mAP, and Rank-n

  • We propose a dual-channel deep network combining heterogeneous center loss and non-local features

  • We concatenate the features of each horizontal segmentation into a whole for cross-modality person re-identification technology (Re-ID)

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Summary

Introduction

Person re-identification technology (Re-ID) uses the whole body image of pedestrians for identity recognition, which can extend the space-time continuity of the continuous tracking of pedestrians under cameras. Feature extraction means extracting the image features of the target pedestrian and candidate pedestrian images [1,2,3,4,5]. The distance between the target pedestrian and candidate pedestrian images features is calculated by metric learning, and the similarity values between them are calculated. Since the application of deep learning to computer vision, the recognition accuracy of single-modality pedestrian re-identification [11,12,13,14,15,16,17] has reached new stage, which has even exceeded the ability of human re-identification

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