Region-based Quality Estimation Network for Large-scale Person Re-identification
Guanglu Song, Biao Leng, Yu Liu, Congrui Hetang, Shaofan Cai

TL;DR
This paper introduces a region-based quality estimation network for large-scale person re-identification, effectively handling occlusion and noise by aggregating information from multiple frames, and also provides a new high-quality dataset for the community.
Contribution
The paper presents a novel Region-based Quality Estimation Network (RQEN) with an effective training mechanism and introduces the high-quality LPW dataset for person re-identification.
Findings
Achieved 92.4% on PRID 2011
Achieved 76.1% on iLIDS-VID
Achieved 77.83% on MARS
Abstract
One of the major restrictions on the performance of video-based person re-id is partial noise caused by occlusion, blur and illumination. Since different spatial regions of a single frame have various quality, and the quality of the same region also varies across frames in a tracklet, a good way to address the problem is to effectively aggregate complementary information from all frames in a sequence, using better regions from other frames to compensate the influence of an image region with poor quality. To achieve this, we propose a novel Region-based Quality Estimation Network (RQEN), in which an ingenious training mechanism enables the effective learning to extract the complementary region-based information between different frames. Compared with other feature extraction methods, we achieved comparable results of 92.4%, 76.1% and 77.83% on the PRID 2011, iLIDS-VID and MARS,…
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Taxonomy
TopicsVideo Surveillance and Tracking Methods · Gait Recognition and Analysis · Human Pose and Action Recognition
