REGION-PARTITION BASED BILINEAR FUSION NETWORK FOR PERSON RE-IDENTIFICATION

Xiao Hu, Xiaoqiang Guo, Zhuqing Jiang, Yun Zhou, Zixuan Yang
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Abstract

Person Re-Identification (ReID) aims to match people across disjoint camera views. Feature representation and matching are two critical components in person ReID task. In this paper, we introduce a region-partition based bilinear network (RPBi-Net), aiming to capture both global and local information simultaneously. Firstly, a novel Part Box Estimation (PBE) sub-network is embedded to operate region partition on original image. Considering the different importance of human parts, we propose a weighted region partition loss when learning PBE. Secondly, a two stream convolutional neural network is built to learn high-level feature representation from both the whole and partitioned human body. Finally, the learned local and global features are fused in a compact bilinear way, so as to acquire a final descriptor for matching pedestrians. Experimental validation on three benchmark datasets, i.e., CUHK01, CUHK03, Market1501, demonstrates that our model significantly outperforms the state-of-the-art methods.
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基于区域划分的双线性融合网络人再识别
人物再识别(ReID)的目标是在不相交的摄像机视图中匹配人物。特征表示和匹配是人脸识别任务的两个重要组成部分。本文提出了一种基于区域划分的双线性网络(rbi - net),旨在同时捕获全局和局部信息。首先,嵌入一种新的局部盒估计(PBE)子网络,对原始图像进行区域划分;考虑到人体各部位的重要性不同,我们提出了一种加权区域划分损失算法。其次,构建双流卷积神经网络,学习人体整体和分割后的高级特征表示;最后,将学习到的局部特征和全局特征以紧凑的双线性方式融合,从而获得最终的行人匹配描述符。在三个基准数据集(即CUHK01, CUHK03, Market1501)上的实验验证表明,我们的模型明显优于最先进的方法。
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