资源论文Person Re-identification by Video Ranking

Person Re-identification by Video Ranking

2020-04-06 | |  52 |   42 |   0

Abstract

Current person re-identification (re-id) methods typically rely on single-frame imagery features, and ignore space-time information from image sequences. Single-frame (single-shot) visual appearance matching is inherently limited for person re-id in public spaces due to visual am- biguity arising from non-overlapping camera views where viewpoint and lighting changes can cause significant appearance variation. In this work, we present a novel model to automatically select the most discriminative video fragments from noisy image sequences of people where more reli- able space-time features can be extracted, whilst simultaneously to learn a video ranking function for person re-id. Also, we introduce a new im- age sequence re-id dataset (iLIDS-VID) based on the i-LIDS MCT bench- mark data. Using the iLIDS-VID and PRID 2011 sequence re-id datasets, we extensively conducted comparative evaluations to demonstrate the ad- vantages of the proposed model over contemporary gait recognition, holis- tic image sequence matching and state-of-the-art single-shot/multi-shot based re-id methods.

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