English

Advancing Deep Metric Learning Through Multiple Batch Norms And Multi-Targeted Adversarial Examples

Machine Learning 2022-12-07 v2 Computer Vision and Pattern Recognition

Abstract

Deep Metric Learning (DML) is a prominent field in machine learning with extensive practical applications that concentrate on learning visual similarities. It is known that inputs such as Adversarial Examples (AXs), which follow a distribution different from that of clean data, result in false predictions from DML systems. This paper proposes MDProp, a framework to simultaneously improve the performance of DML models on clean data and inputs following multiple distributions. MDProp utilizes multi-distribution data through an AX generation process while leveraging disentangled learning through multiple batch normalization layers during the training of a DML model. MDProp is the first to generate feature space multi-targeted AXs to perform targeted regularization on the training model's denser embedding space regions, resulting in improved embedding space densities contributing to the improved generalization in the trained models. From a comprehensive experimental analysis, we show that MDProp results in up to 2.95% increased clean data Recall@1 scores and up to 2.12 times increased robustness against different input distributions compared to the conventional methods.

Keywords

Cite

@article{arxiv.2211.16253,
  title  = {Advancing Deep Metric Learning Through Multiple Batch Norms And Multi-Targeted Adversarial Examples},
  author = {Inderjeet Singh and Kazuya Kakizaki and Toshinori Araki},
  journal= {arXiv preprint arXiv:2211.16253},
  year   = {2022}
}
R2 v1 2026-06-28T07:16:47.624Z