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首页> 外文期刊>Eurasip Journal on Wireless Communications and Networking >Learning deep features from body and parts for person re-identification in camera networks
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Learning deep features from body and parts for person re-identification in camera networks

机译:从身体和部位中学习深度特征,以便在摄像机网络中重新识别人

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In this paper, we propose to learn deep features from body and parts (DFBP) in camera networks which combine the advantages of part-based and body-based features. Specifically, we utilize subregion pairs to train the part-based feature learning model and predict whether they belong to positive subregion pairs. Meanwhile, we utilize holistic pedestrian images to train body-based feature learning model and predict the identities of the input images. In order to further improve the discrimination of features, we concatenate the part-based and body-based features to form the final pedestrian representation. We evaluate the proposed DFBP on two large-scale databases, i.e., Market1501 database and CUHK03 database. The results demonstrate that the proposed DFBP outperforms the state-of-the-art methods.
机译:在本文中,我们建议从相机网络中的身体和零件(DFBP)学习深度特征,这些特征结合了基于零件和基于身体的特征的优点。具体来说,我们利用子区域对来训练基于零件的特征学习模型,并预测它们是否属于正子区域对。同时,我们利用整体行人图像来训练基于身体的特征学习模型,并预测输入图像的身份。为了进一步改善特征的辨别力,我们将基于零件的特征和基于身体的特征连接起来以形成最终的行人表征。我们在两个大型数据库(即Market1501数据库和CUHK03数据库)上评估了拟议的DFBP。结果表明,提出的DFBP优于最新方法。

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