Re-identification by neighborhood structure metric learning

作者:

Highlights:

• NSML is proposed to tackle the data variability and sparsity problem in person re-identification.

• NSML learns discriminative dissimilarities on the novel neighborhood structure manifold.

• NSML solves the non-convex optimization problem by the new cutting-surface approach.

• The effectiveness, robustness, efficiency, stability, and generalizability of NSML are experimentally validated.

摘要

Highlights•NSML is proposed to tackle the data variability and sparsity problem in person re-identification.•NSML learns discriminative dissimilarities on the novel neighborhood structure manifold.•NSML solves the non-convex optimization problem by the new cutting-surface approach.•The effectiveness, robustness, efficiency, stability, and generalizability of NSML are experimentally validated.

论文关键词:Re-identification,Metric learning,Neighborhood structure manifold

论文评审过程:Received 8 July 2015, Revised 20 May 2016, Accepted 1 August 2016, Available online 5 August 2016, Version of Record 16 August 2016.

论文官网地址:https://doi.org/10.1016/j.patcog.2016.08.001