资源论文Learning to rank in person re-identification with metric ensembles

Learning to rank in person re-identification with metric ensembles

2019-12-18 | |  39 |   39 |   0

Abstract

We propose an effective structured learning based approach to the problem of person re-identifification which outperforms the current state-of-the-art on most benchmark data sets evaluated. Our framework is built on the basis of multiple low-level hand-crafted and high-level visual features. We then formulate two optimization algorithms, which directly optimize evaluation measures commonly used in person re-identifification, also known as the Cumulative Matching Characteristic (CMC) curve. Our new approach is practical to many real-world surveillance applications as the re-identifification performance can be concentrated in the range of most practical importance. The combination of these factors leads to a person reidentifification system which outperforms most existing algorithms. More importantly, we advance state-of-the-art results on person re-identifification by improving the rank- 1 recognition rates from 40% to 50% on the iLIDS benchmark, 16% to 18% on the PRID2011 benchmark, 43% to 46% on the VIPeR benchmark, 34% to 53% on the CUHK01 benchmark and 21% to 62% on the CUHK03 benchmark

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