Learning Deep Context-Aware Features over Body and Latent Parts for Person Re-identification

Dangwei Li, Xiaotang Chen, Z. Zhang, Kaiqi Huang
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引用次数: 621

Abstract

Person Re-identification (ReID) is to identify the same person across different cameras. It is a challenging task due to the large variations in person pose, occlusion, background clutter, etc. How to extract powerful features is a fundamental problem in ReID and is still an open problem today. In this paper, we design a Multi-Scale Context-Aware Network (MSCAN) to learn powerful features over full body and body parts, which can well capture the local context knowledge by stacking multi-scale convolutions in each layer. Moreover, instead of using predefined rigid parts, we propose to learn and localize deformable pedestrian parts using Spatial Transformer Networks (STN) with novel spatial constraints. The learned body parts can release some difficulties, e.g. pose variations and background clutters, in part-based representation. Finally, we integrate the representation learning processes of full body and body parts into a unified framework for person ReID through multi-class person identification tasks. Extensive evaluations on current challenging large-scale person ReID datasets, including the image-based Market1501, CUHK03 and sequence-based MARS datasets, show that the proposed method achieves the state-of-the-art results.
学习身体和潜在部位的深度上下文感知特征,用于人的再识别
人员重新识别(ReID)是指在不同的摄像机中识别同一个人。这是一项具有挑战性的任务,因为人的姿势、遮挡、背景杂乱等都有很大的变化。如何提取强大的特征是ReID的一个基本问题,今天仍然是一个开放的问题。在本文中,我们设计了一个多尺度上下文感知网络(MSCAN)来学习全身和身体部位的强大特征,通过在每一层叠加多尺度卷积,可以很好地捕获局部上下文知识。此外,我们建议使用具有新空间约束的空间变压器网络(STN)来学习和定位可变形的行人部件,而不是使用预定义的刚性部件。在基于部位的表征中,学习到的身体部位可以缓解姿势变化和背景混乱等困难。最后,通过多类别的人物识别任务,将全身和身体部位的表征学习过程整合到统一的人物识别框架中。对当前具有挑战性的大规模人体ReID数据集(包括基于图像的Market1501、CUHK03和基于序列的MARS数据集)的广泛评估表明,所提出的方法达到了最先进的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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