Collapse-Aware Triplet Decoupling for Adversarially Robust Image Retrieval

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Abstract

Adversarial training has achieved substantial performance in defending image retrieval against adversarial examples. However, existing studies in deep metric learning (DML) still suffer from two major limitations:weak adversaryandmodel collapse. In this paper, we address these two limitations by proposingCollapse-AwareTRIpletDEcoupling (CA-TRIDE). Specifically, TRIDE yields a stronger adversary by spatially decoupling the perturbation targets into the anchor and the other candidates. Furthermore, CA prevents the consequential model collapse, based on a novel metric, collapseness, which is incorporated into the optimization of perturbation. We also identify two drawbacks of the existing robustness metric in image retrieval and propose a new metric for a more reasonable robustness evaluation. Extensive experiments on three datasets demonstrate that CA-TRIDE outperforms existing defense methods in both conventional and new metrics.Codes are available at https://github.com/michaeltian108/CA-TRIDE.

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Jan 28, 2026
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