PERSON RE-IDENTIFICATION BY REFINED ATTRIBUTE PREDICTION AND WEIGHTED MULTI-PART CONSTRAINTS

Xiao Hu, Xiaoqiang Guo, Zhuqing Jiang, Yun Zhou, Zixuan Yang
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引用次数: 1

Abstract

Person re-identification (re-id) aims to match person images captured in non-overlapping camera views. Convolutional Neural Network (CNN) has been verified to be powerful in pedestrian feature extraction. However, the CNN features focus more on global visual information, which are sensitive to environmental variations. In comparison, attribute features contain semantic information and prove to be more stable to cross-view appearance changes. In this paper, we present a novel network which leverages high-level semantic attributes to enhance pedestrian descriptors. By introducing hand-crafted multi-colorspaces and texture information to refine CNN features, we acquire a more invariant and reliable feature representation for attribute prediction. The attribute-based stream is further embedded into a part-based CNN branch for re-id. This part-based CNN is trained with a weighted integration of multi-part identification losses. Experiments on two public datasets demonstrate significant performance improvements of our method over state of the arts.
基于精细属性预测和加权多部分约束的人物再识别
人物重新识别(re-id)旨在匹配在非重叠的相机视图中捕获的人物图像。卷积神经网络(Convolutional Neural Network, CNN)在行人特征提取方面已经被证明是非常强大的。然而,CNN特征更多地关注全局视觉信息,这些信息对环境变化很敏感。相比之下,属性特征包含语义信息,并且对跨视图外观变化更加稳定。在本文中,我们提出了一种利用高级语义属性来增强行人描述符的新网络。通过引入手工制作的多颜色空间和纹理信息对CNN特征进行细化,获得更不变、更可靠的特征表示,用于属性预测。基于属性的流被进一步嵌入到基于部件的CNN分支中。这种基于部分的CNN是用多部分识别损失的加权积分来训练的。在两个公共数据集上的实验表明,我们的方法在性能上比目前的方法有了显著的提高。
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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