Recurrent Convolutional Network for Video-Based Person Re-identification

Niall McLaughlin, J. M. D. Rincón, P. Miller
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引用次数: 523

Abstract

In this paper we propose a novel recurrent neural network architecture for video-based person re-identification. Given the video sequence of a person, features are extracted from each frame using a convolutional neural network that incorporates a recurrent final layer, which allows information to flow between time-steps. The features from all timesteps are then combined using temporal pooling to give an overall appearance feature for the complete sequence. The convolutional network, recurrent layer, and temporal pooling layer, are jointly trained to act as a feature extractor for video-based re-identification using a Siamese network architecture. Our approach makes use of colour and optical flow information in order to capture appearance and motion information which is useful for video re-identification. Experiments are conduced on the iLIDS-VID and PRID-2011 datasets to show that this approach outperforms existing methods of video-based re-identification.
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基于视频的人物再识别的循环卷积网络
本文提出了一种新的基于视频的人物再识别递归神经网络结构。给定一个人的视频序列,使用包含循环最后层的卷积神经网络从每帧中提取特征,这允许信息在时间步之间流动。然后使用时间池将来自所有时间步骤的特征组合起来,以给出完整序列的总体外观特征。卷积网络、循环层和时间池化层被联合训练,作为使用暹罗网络架构的基于视频的再识别的特征提取器。我们的方法利用颜色和光流信息来捕捉外观和运动信息,这对视频的重新识别很有用。在iLIDS-VID和PRID-2011数据集上进行的实验表明,该方法优于现有的基于视频的再识别方法。
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