Generative Metric Learning for Adversarially Robust Open-world Person Re-Identification

Author:

Liu Deyin1,Wu Lin (Yuanbo)2,Hong Richang3,Ge Zongyuan4,Shen Jialie5,Boussaid Farid6,Bennamoun Mohammed6

Affiliation:

1. Anhui Provincial Key Laboratory of Multimodal Cognitive Computation, School of Artificial Intelligence, Anhui University, Hefei, China

2. The University of Western Australia, Perth, WA, Australia and Hefei University of Technology, Hefei, China

3. Hefei University of Technology, Hefei, China

4. Monash-Airdoc Research, Monash University, Melbourne, VIC, Australia

5. Queen’s University, Belfast, UK

6. The University of Western Australia, Perth, WA, Australia

Abstract

The vulnerability of re-identification (re-ID) models under adversarial attacks is of significant concern as criminals may use adversarial perturbations to evade surveillance systems. Unlike a closed-world re-ID setting (i.e., a fixed number of training categories), a reliable re-ID system in the open world raises the concern of training a robust yet discriminative classifier, which still shows robustness in the context of unknown examples of an identity. In this work, we improve the robustness of open-world re-ID models by proposing a generative metric learning approach to generate adversarial examples that are regularized to produce robust distance metric. The proposed approach leverages the expressive capability of generative adversarial networks to defend the re-ID models against feature disturbance attacks. By generating the target people variants and sampling the triplet units for metric learning, our learned distance metrics are regulated to produce accurate predictions in the feature metric space. Experimental results on the three re-ID datasets, i.e., Market-1501, DukeMTMC-reID, and MSMT17 demonstrate the robustness of our method.

Funder

Australian Research Council

NSFC

Co-operative Innovation Project of Colleges in Anhui

Publisher

Association for Computing Machinery (ACM)

Subject

Computer Networks and Communications,Hardware and Architecture

Reference71 articles.

1. Raghunathan Aditi, Steinhardt Jacob, and Liang Percy. 2018. Certified defenses against adversarial examples. In ICLR.

2. Ejaz Ahmed, Michael Jones, and Tim K. Marks. 2015. An improved deep learning architecture for person re-identification. In CVPR. 3908–3916.

3. Person Re-Identification by Robust Canonical Correlation Analysis

4. Anish Athalye, Logan Engstrom, Andrew Ilyas, and Kevin Kwok. 2018. Synthesizing robust adversarial examples. In ICML. 284–293.

5. Metric attack and defence for person re-identification;Bai Song;IEEE Trans. Pattern Anal. Mach. Intell.,2021

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