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Effective person re-identification by self-attention model guided feature learning

机译:通过自我注意模型指导特征学习对有效人员进行重新识别

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摘要

Person re-identification (re-ID), of which the goal is to recognize person identities of images captured by non-overlapping cameras, is a challenging topic in computer vision. Most existing person re-ID methods conduct directly on detected objects, which ignore the space misalignment caused by detectors, human pose variation, and occlusion problems. To tackle the above mentioned difficulties, we propose a self-attention model guided deep convolutional neural network(DCNN) to learn robust features from image shots. Kernels of the self-attention model evaluate weights for the importance of different person regions. To solve the local feature dependence problem of feature extraction, the non-local feature map generated by the self-attention model is fused with the original feature map generated from the resnet-50. Furthermore, the loss function considers both the cross-entropy loss and the triplet loss in the training process, which enables the network to capture common characteristics within the same individuals and significant differences between distinct persons. Extensive experiments and comparative evaluations show that our proposed strategy outperforms most of the state-of-the-art methods on standard datasets: Market-1501, DukeMTMC-relD, and CUHK03. (C) 2019 Elsevier B.V. All rights reserved.
机译:人员重识别(re-ID)的目标是识别不重叠相机捕获的图像的人员身份,这是计算机视觉中的一个具有挑战性的主题。现有的大多数人re-ID方法都直接对检测到的对象进行操作,而这些对象忽略了由检测器,人体姿势变化和遮挡问题引起的空间未对准。为了解决上述困难,我们提出了一种自注意力模型指导的深度卷积神经网络(DCNN),以从图像中学习鲁棒的特征。自我注意模型的内核评估权重对于不同人的区域的重要性。为了解决特征提取的局部特征依赖问题,将自注意力模型生成的非局部特征图与从resnet-50生成的原始特征图融合。此外,损失函数在训练过程中同时考虑了交叉熵损失和三元组损失,这使网络能够捕获同一个人的共同特征以及不同个人之间的显着差异。大量实验和比较评估表明,我们提出的策略优于标准数据集上的大多数最新方法:Market-1501,DukeMTMC-relD和CUHK03。 (C)2019 Elsevier B.V.保留所有权利。

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