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Deep discriminative network with inception module for person re-identification

机译:带有区分模块的深度区分网络,用于人员重新识别

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Convolutional neural networks have been verified to be exceptionally powerful on extracting semantic features, which contribute to a great progress in computer vision. However, focusing too much on the superiority, researchers seem to pay less attention to exploring CNNs' potential in other aspects, e.g. the ability to discriminate the difference. In this work we try to dig into the discriminative power of CNNs and introduce a deep discriminative network with inception module (DDN-IM) for person re-identification. Without individual feature extraction as prerequisite, input images from two different non-overlapping camera views are concatenated in depth at the beginning, followed by series of convolutional and nonlinear operations, etc. to predict their similarity. In addition, inception module is embedded in our network to boost the performance. We validate our proposal on several person re-identification datasets, CUHK01, QMUL GRID and PRID2011 included. We obtain competitive or superior performance compared to the state-of-the-art methods.
机译:卷积神经网络已被证明在提取语义特征方面异常强大,这为计算机视觉的发展做出了巨大贡献。但是,研究人员过多地关注优势,似乎对开发CNN在其他方面(例如,区分差异的能力。在这项工作中,我们尝试挖掘CNN的判别能力,并引入一个具有初始模块(DDN-IM)的深度判别网络,用于人员重新识别。在没有单独提取特征作为前提的情况下,来自两个不同非重叠摄像机视图的输入图像在开始时会进行深度连接,然后进行一系列的卷积和非线性运算等,以预测它们的相似性。此外,Inception模块已嵌入到我们的网络中以提高性能。我们在包括CUHK01,QMUL GRID和PRID2011在内的多个人员重新识别数据集上验证了我们的建议。与最先进的方法相比,我们获得了竞争或更高的性能。

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