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Person Re-Identification by Deep Learning Attribute-Complementary Information

机译:深度学习属性互补信息的人重新识别

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Automatic person re-identification (re-id) across camera boundaries is a challenging problem. Approaches have to be robust against many factors which influence the visual appearance of a person but are not relevant to the person's identity. Examples for such factors are pose, camera angles, and lighting conditions. Person attributes are a semantic high level information which is invariant across many such influences and contain information which is often highly relevant to a person's identity. In this work we develop a re-id approach which leverages the information contained in automatically detected attributes. We train an attribute classifier on separate data and include its responses into the training process of our person re-id model which is based on convolutional neural networks (CNNs). This allows us to learn a person representation which contains information complementary to that contained within the attributes. Our approach is able to identify attributes which perform most reliably for re-id and focus on them accordingly. We demonstrate the performance improvement gained through use of the attribute information on multiple large-scale datasets and report insights into which attributes are most relevant for person re-id.
机译:在相机边界上的自动人员重新识别(RE-ID)是一个具有挑战性的问题。对于影响人的视觉外观但与人的身份无关的许多因素,方法必须坚固。这种因素的示例是姿势,相机角度和照明条件。人属性是一种语义高级信息,这些信息在许多这样的影响中不变,并且包含与人身份高度相关的信息。在这项工作中,我们开发了一种重新ID方法,它利用自动检测属性中包含的信息。我们在单独的数据上培训属性分类器,并将其响应进入我们人员RE-ID模型的培训过程,该模型是基于卷积神经网络(CNN)。这允许我们学习一个人表示,其中包含与属性中包含的信息互补的信息。我们的方法能够识别最可靠地执行的属性,并相应地专注于它们。我们展示了通过使用多个大型数据集的属性信息来获得的性能改进,并报告对该属性对人员重新ID最相关的洞察。

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