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Video-based Person Re-identification by Deep Feature Guided Pooling

机译:基于视频的人通过Deep Feature Guiding Cooling重新识别

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Person re-identification (re-id) aims to match a specific person across non-overlapping views of different cameras, which is currently one of the hot topics in computer vision. Compared with image-based person re-id, video-based techniques could achieve better performance by fully utilizing the space-time information. This paper presents a novel video-based person re-id method named Deep Feature Guided Pooling (DFGP), which can take full advantage of the space-time information. The contributions of the method are in the following aspects: (1) PCA-based convolutional network (PCN), a lightweight deep learning network, is trained to generate deep features of video frames. Deep features are aggregated by average pooling to obtain person deep feature vectors. The vectors are utilized to guide the generation of human appearance features, which makes the appearance features robust to the severe noise in videos. (2) Hand-crafted local features of videos are aggregated by max pooling to reinforce the motion variations of different persons. In this way, the human descriptors are more discriminative. (3) The final human descriptors are composed of deep features and hand-crafted local features to take their own advantages and the performance of identification is promoted. Experimental results show that our approach outperforms six other state-of-the-art video-based methods on the challenging PRID 2011 and iLIDS-VID video-based person re-id datasets.
机译:人重新识别(RE-ID)旨在匹配不同摄像机的非重叠视图的特定人员,目前是计算机视觉中的热门话题之一。与基于图像的人的重新ID相比,通过充分利用时空信息,基于视频技术可以实现更好的性能。本文介绍了一个名为Deep Feature Guided Pooling(DFGP)的新型基于视频的人RE-ID方法,可以充分利用时空信息。该方法的贡献在以下几个方面:(1)基于PCA的卷积网络(PCN),轻量级深度学习网络训练,以产生视频帧的深度特征。深度特征通过平均池汇总以获得人的深度特征向量。该载体用于指导人类外观特征的产生,这使得外观具有对视频中的严重噪声的鲁棒性。 (2)通过MAX池汇总视频的手工制作本地特征,以加强不同人的运动变化。以这种方式,人类描述符是更辨别的。 (3)最终的人类描述符由深度特征和手工制作的本地特征组成,以采取自己的优势,促进识别性能。实验结果表明,我们的方法在挑战PRID 2011和ILIDS-VID视频的人重新ID数据集上占有六种其他基于最先进的视频的方法。

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