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Recurrent Neural Networks for Person Re-identification Revisited

机译:用于人员重新识别的经常性神经网络重新识别

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The task of person re-identification has recently received rising attention due to the high performance achieved by new methods based on deep learning. In particular, in the context of video-based re-identification, many state-of-the-art works have explored the use of Recurrent Neural Networks (RNNs) to process input sequences. In this work, we revisit this tool by deriving an approximation which reveals the small effect of recurrent connections, leading to a much simpler feed-forward architecture. Using the same parameters as the recurrent version, our proposed feed-forward architecture obtains very similar accuracy. More importantly, our model can be combined with a new training process to significantly improve re-identification performance. Our experiments demonstrate that the proposed models converge substantially faster than recurrent ones, with accuracy improvements by up to 5% on two datasets. The performance achieved is better or on par with other RNN-based person re-identification techniques.
机译:由于基于深度学习的新方法实现的高性能,人员重新识别的任务最近受到了上升。特别地,在基于视频的重新识别的背景下,许多最先进的作品探索了经常性神经网络(RNN)来处理输入序列。在这项工作中,我们通过导出近似值来重新审视此工具,该近似揭示了经常性连接的小效果,导致更简单的前馈架构。使用与复制版本相同的参数,我们提出的前馈架构获得了非常相似的准确性。更重要的是,我们的模型可以与新的培训过程结合,以显着提高重新识别性能。我们的实验表明,所提出的型号比经常性的速度大大收敛,精度在两个数据集上的准确性高达5%。与其他基于RNN的人的重新识别技术更好或达到的性能更好或恰当。

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