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Deep Group-Shuffling Dual Random Walks With Label Smoothing for Person Reidentification

机译:深群沙回双重随机散步,标签平滑为人员的重新入住

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摘要

Person reidentification (ReID) is a challenging task of finding a target pedestrian in a gallery set collected from multiple nonoverlapping camera views. Recently, state-of-the-art ReID performance has been achieved via an end-to-end trainable deep neural network framework, which integrates convolution feature extraction, similarity learning and reranking into a joint optimization framework. In such a framework, the similarity is learned via an embedding network, the reranking is conducted with a random walk, and the whole framework is optimized with a cross-entropy-based verification loss. Unfortunately, the embedding net is difficult to train well because their two-dimensional outputs mutually interfere each other when using the conventional random walk. In addition, the supervision information has not been fully exploited during the training phase due to the binary nature of the verification loss. In this paper, we propose a novel approach, called group-shuffling dual random walks with label smoothing (GSDRWLS), in which random walks are performed separately on two channels & x2014;one for positive verification and one for negative verification & x2014;and the binary verification labels are properly modified with an adaptive label smoothing technique before feeding into the verification loss in order to train the overall network effectively and to avoid the overfitting problem. Extensive experiments conducted on three large benchmark datasets, including CUHK03, Market-1501 and DukeMTMC, confirm the superior performance of our proposal.
机译:人员重新认识(Reid)是在从多个非实际相机视图中收集的画廊集中找到目标行人的一项挑战任务。最近,通过端到端培训的深度神经网络框架实现了最先进的内部性能,它集成了卷积特征提取,相似度学习和重新登记到联合优化框架中。在这样的框架中,通过嵌入式网络学习相似性,重新登录用随机步行进行,并且整个框架通过基于跨熵的验证损耗进行了优化。不幸的是,嵌入网难以训练,因为当使用传统的随机步行时,它们的二维输出相互干扰。此外,由于验证损失的二进制本质,监管信息尚未在培训阶段充分利用。在本文中,我们提出了一种新的方法,称为群组混洗双随机行走,标签平滑(GSDRWL),其中随机散步在两个通道和X2014上单独执行;一个用于正验证,一个用于负验证和X2014。和在喂养验证损失之前,使用自适应标签平滑技术正确修改二进制验证标签,以便有效地培训整体网络并避免过度装备问题。在三个大型基准数据集中进行的广泛实验,包括CUHK03,Market-1501和Dukemtmc,确认了我们提案的卓越表现。

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