Abstract

Person re-identification (Re-ID) has attracted attention due to its wide range of applications. Most recent studies have focused on the extraction of deep features, while ignoring color features that can remain stable, even for illumination variations and the variation in person pose. There are also few studies that combine the powerful learning capabilities of deep learning with color features. Therefore, we hope to use the advantages of both to design a model with low computational resource consumption and excellent performance to solve the task of person re-identification. In this paper, we designed a color feature containing relative spatial information, namely the color feature with spatial information. Then, bidirectional long short-term memory (BLSTM) networks with an attention mechanism are used to obtain the contextual relationship contained in the hand-crafted color features. Finally, experiments demonstrate that the proposed model can improve the recognition performance compared with traditional methods. At the same time, hand-crafted features based on human prior knowledge not only reduce computational consumption compared with deep learning methods but also make the model more interpretable.

Highlights

  • Person re-identification (Re-ID) is a popular direction in computer vision research, with a wide range of application scenarios, such as real-time monitoring, trajectory tracking, security and other applications

  • Most studies [6,7,8] use convolutional neural networks (CNNs) to extract global or local features combined with metric learning losses to solve problems

  • The experimental results demonstrate that the proposed model can improve the recognition performance compared with traditional methods

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Summary

Introduction

Person re-identification (Re-ID) is a popular direction in computer vision research, with a wide range of application scenarios, such as real-time monitoring, trajectory tracking, security and other applications. Most studies [6,7,8] use convolutional neural networks (CNNs) to extract global or local features combined with metric learning losses to solve problems. There are some studies that integrate human structural information [9] into tasks, and some studies that introduce attention mechanisms (AMs) [10,11], which can focus on important points in substantial information, selecting key information and ignoring other unimportant information, to obtain pedestrian attributes.

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