CVAIMMMar 20, 2017

Learning Correspondence Structures for Person Re-identification

arXiv:1703.06931v356 citations
Originality Incremental advance
AI Analysis

It addresses misalignment issues in person re-identification for surveillance applications, representing an incremental improvement over existing methods.

This paper tackles spatial misalignments in person re-identification due to camera-view changes or human-pose variations by learning correspondence structures and integrating global constraints, achieving improved matching scores as demonstrated on various datasets.

This paper addresses the problem of handling spatial misalignments due to camera-view changes or human-pose variations in person re-identification. We first introduce a boosting-based approach to learn a correspondence structure which indicates the patch-wise matching probabilities between images from a target camera pair. The learned correspondence structure can not only capture the spatial correspondence pattern between cameras but also handle the viewpoint or human-pose variation in individual images. We further introduce a global constraint-based matching process. It integrates a global matching constraint over the learned correspondence structure to exclude cross-view misalignments during the image patch matching process, hence achieving a more reliable matching score between images. Finally, we also extend our approach by introducing a multi-structure scheme, which learns a set of local correspondence structures to capture the spatial correspondence sub-patterns between a camera pair, so as to handle the spatial misalignments between individual images in a more precise way. Experimental results on various datasets demonstrate the effectiveness of our approach.

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