Eliminating Background-bias for Robust Person Re-identification

Maoqing Tian, Shuai Yi, Hongsheng Li, Shihua Li, Xuesen Zhang, Jianping Shi, Junjie Yan, Xiaogang Wang
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引用次数: 138

Abstract

Person re-identification is an important topic in intelligent surveillance and computer vision. It aims to accurately measure visual similarities between person images for determining whether two images correspond to the same person. State-of-the-art methods mainly utilize deep learning based approaches for learning visual features for describing person appearances. However, we observe that existing deep learning models are biased to capture too much relevance between background appearances of person images. We design a series of experiments with newly created datasets to validate the influence of background information. To solve the background bias problem, we propose a person-region guided pooling deep neural network based on human parsing maps to learn more discriminative person-part features, and propose to augment training data with person images with random background. Extensive experiments demonstrate the robustness and effectiveness of our proposed method.
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消除背景偏差的稳健人物再识别
人的再识别是智能监控和计算机视觉领域的一个重要课题。它旨在准确测量人物图像之间的视觉相似性,以确定两个图像是否对应于同一个人。最先进的方法主要利用基于深度学习的方法来学习描述人的外表的视觉特征。然而,我们观察到现有的深度学习模型在捕捉人物图像背景外观之间的相关性方面存在偏见。我们用新创建的数据集设计了一系列实验来验证背景信息的影响。为了解决背景偏差问题,我们提出了一种基于人类解析地图的人-区域引导池化深度神经网络,以学习更具判别性的人-部位特征,并提出了用随机背景的人图像增强训练数据。大量的实验证明了该方法的鲁棒性和有效性。
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