arXiv Analytics

Sign in

arXiv:1706.00553 [cs.CV]AbstractReferencesReviewsResources

Rank Persistence: Assessing the Temporal Performance of Real-World Person Re-Identification

Srikrishna Karanam, Eric Lam, Richard J. Radke

Published 2017-06-02Version 1

Designing useful person re-identification systems for real-world applications requires attention to operational aspects not typically considered in academic research. Here, we focus on the temporal aspect of re-identification; that is, instead of finding a match to a probe person of interest in a fixed candidate gallery, we consider the more realistic scenario in which the gallery is continuously populated by new candidates over a long time period. A key question of interest for an operator of such a system is: how long is a correct match to a probe likely to remain in a rank-k shortlist of possible candidates? We propose to distill this information into a Rank Persistence Curve (RPC), which allows different algorithms' temporal performance characteristics to be directly compared. We present examples to illustrate the RPC using a new long-term dataset with multiple candidate reappearances, and discuss considerations for future re-identification research that explicitly involves temporal aspects.

Related articles: Most relevant | Search more
arXiv:2006.02631 [cs.CV] (Published 2020-06-04)
FastReID: A Pytorch Toolbox for Real-world Person Re-identification
arXiv:2004.04933 [cs.CV] (Published 2020-04-10)
Real-world Person Re-Identification via Degradation Invariance Learning
arXiv:2306.03993 [cs.CV] (Published 2023-06-06)
Real-Time Online Unsupervised Domain Adaptation for Real-World Person Re-identification