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Temporal Complementary Learning for Video Person Re-Identification

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This paper proposes a Temporal Complementary Learning Network that extracts complementary features of consecutive video frames for video person re-identification. Firstly, we introduce a Temporal Saliency Erasing (TSE) module including a saliency erasing operation and a series of ordered learners. Specifically, for a specific frame of a video, the saliency erasing operation drives the specific learner to mine new and complementary parts by erasing the parts activated by previous frames. Such that the diverse visual features can be discovered for consecutive frames and finally form an integral characteristic of the target identity. Furthermore, a Temporal Saliency Boosting (TSB) module is designed to propagate the salient information among video frames to enhance the salient feature. It is complementary to TSE by effectively alleviating the information loss caused by the erasing operation of TSE. Extensive experiments show our method performs favorably against state-of-the-arts. The source code is available at https://github.com/blue-blue272/VideoReID-TCLNet.

Ruibing Hou, Hong Chang, Bingpeng Ma, Shiguang Shan, Xilin Chen• 2020

Related benchmarks

TaskDatasetResultRank
Video Person Re-IDMARS
Rank-1 Acc89.8
106
Video Person Re-IDiLIDS-VID
Rank-186.6
80
Person Re-IdentificationCCVID General
R-1 Accuracy81.4
45
Video Person Re-IdentificationMARS (test)
Rank-189.8
35
Video Person Re-IdentificationDukeMTMC-VideoReID
Rank-1 Accuracy96.9
26
Video Person Re-IdentificationG2A-VReID Ground to Aerial
mAP65.4
25
Video Person Re-IdentificationiLIDS-VID (test)
Rank-186.6
25
Video Person Re-IdentificationCCVID
Top-1 Accuracy80.7
22
Video Person Re-IdentificationAG-VPReID Aerial to Ground
mAP57.2
20
Video-based Person Re-identificationDukeV
R196.7
15
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