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Stochastic attentions and context learning for person re-identification

机译:随机关注和人物学习人员重新识别

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摘要

The discriminative parts of people’s appearance play a significant role in their re-identification across non overlapping camera views. However, just focusing on the discriminative or attention regions without catering the contextual information does not always help. It is more important to learn the attention with reference to their spatial locations in context of the whole image. Current person re-identification (re-id) approaches either use separate modules or classifiers to learn both of these; the attention and its context, resulting in highly expensive person re-id solutions. In this work, instead of handling attentions and the context separately, we employ a unified attention and context mapping (ACM) block within the convolutional layers of network, without any additional computational resources overhead. The ACM block captures the attention regions as well as the relevant contextual information in a stochastic manner and enriches the final person representations for robust person re-identification. We evaluate the proposed method on 04 public benchmarks of person re-identification i.e., Market1501, DukeMTMC-Reid, CUHK03 and MSMT17 and find that the ACM block consistently improves the performance of person re-identification over the baseline networks.
机译:人们出现的歧视部分在重新识别非重叠相机视图中起着重要作用。但是,只要关注歧视或注意力区域而不迎合上下文信息并不总是有所帮助。在整个图像的上下文中,参考他们的空间位置更为重要。当前人员重新识别(RE-ID)方法使用单独的模块或分类器来学习这些;注意及其背景,导致高度昂贵的人重新ID解决方案。在这项工作中,除了单独处理关注和上下文,我们在网络的卷积层内采用统一的注意和上下文映射(ACM)块,而没有任何额外的计算资源开销。 ACM块以随机的方式捕获注意区域以及相关的上下文信息,并丰富最终的最终人员表示重新识别。我们在04人的公共基准上评估了拟议的方法重新识别I.,Market1501,Dukemtmc-Reid,CuHK03和MSMT17,并发现ACM块一致地提高人员重新识别基线网络的性能。

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