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Discriminative deep transfer metric learning for cross-scenario person re-identification

机译:跨场景人员重新识别的区分深度转移度量学习

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摘要

A discriminative deep transfer metric learning method called DDTML is proposed for cross-scenario person re-identification (Re-ID). To develop the Re-ID model in a new scenario, a large number of pairwise cross-camera-view person images are deemed necessary. However, this work is very expensive due to both monetary cost and labeling time. In order to solve this problem, a DDTML for cross-scenario Re-ID is proposed using the transferring data in other scenarios to help build a Re-ID model in a new scenario. Specifically, to measure distribution difference across scenarios, a maximum mean discrepancy based on class distribution called MMDCD is proposed by embedding the discriminative information of data into the concept of the maximum mean discrepancy. Unlike most metric learning methods, which usually learn a linear distance to project data into the feature space, DDTML uses a deep neural network to develop the multilayers nonlinear transformations for learning the nonlinear distance metric, while DDTML transfers discriminative information from the source domain to the target domain. By bedding the MMDCD criteria, DDTML minimizes the distribution divergence between the source domain and the target domain. Experimental results on widely used Re-ID datasets Show the effectiveness of the proposed classifiers. (C) The Authors. Published by SPIE under a Creative Commons Attribution 3.0 Unported License.
机译:提出了一种区分性的深度转移度量学习方法,称为DDTML,用于跨场景人员重新识别(Re-ID)。为了在新场景中开发Re-ID模型,认为需要大量成对的跨相机视角的人图像。但是,由于金钱成本和贴标签时间,这项工作非常昂贵。为了解决这个问题,提出了一种跨场景的Re-ID DDTML,它在其他场景下使用传输数据来帮助在新场景下建立Re-ID模型。具体而言,为了度量跨场景的分布差异,通过将数据的判别信息嵌入最大平均差异的概念中,提出了基于类别分布的最大平均差异(称为MMDCD)。与大多数度量学习方法不同(通常会学习线性距离以将数据投影到特征空间中),DDTML使用深度神经网络来开发多层非线性变换,以学习非线性距离度量,而DDTML则将判别信息从源域传输到目标域。目标域。通过遵循MMDCD标准,DDTML可以最小化源域和目标域之间的分布差异。在广泛使用的Re-ID数据集上的实验结果表明了所提出分类器的有效性。 (C)作者。由SPIE根据Creative Commons Attribution 3.0 Unported License发布。

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