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Combine Coarse and Fine Cues: Multi-grained Fusion Network for Video-Based Person Re-identification

机译:结合粗糙和精细提示:用于视频的人的多粒融合网络重新识别

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Video-based person re-identification aims to precisely match video sequences of pedestrian across non-overlapped cameras. Existing methods deal with this task by encoding each frame and aggregating them along time. In order to increase the discriminative ability of video features, we propose an end-to-end framework called Multi-grained Fusion Network (MGFN) which aims to keep both global and local information by combining frame-level representations with different granularities. The final video features are generated by aggregating multi-grained representations on both spatial and temporal. Experiments indicate our method achieves excellent performance on three widely used datasets named PRID-2011, iLIDS-VID, and MARS. Especially on MARS, MGFN surpass state-of-the-art result by 11.5%.
机译:基于视频的人重新识别旨在精确地匹配非重叠摄像机的行人视频序列。现有方法通过对每个帧进行编码并沿时间汇总它们来处理此任务。为了提高视频特征的鉴别能力,我们提出了一种名为多粒融合网络(MGFN)的端到端框架,该框架旨在通过组合具有不同粒度的帧级表示来保持全局和本地信息。通过在空间和时间内聚合多粒化表示来生成最终的视频功能。实验表明,我们的方法在三种广泛使用的数据集中实现了出色的性能,名为Prid-2011,IlIDS-Vid和火星。特别是在火星上,MGFN超越最先进的结果11.5%。

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