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Hardness-Aware Deep Metric Learning

About

This paper presents a hardness-aware deep metric learning (HDML) framework. Most previous deep metric learning methods employ the hard negative mining strategy to alleviate the lack of informative samples for training. However, this mining strategy only utilizes a subset of training data, which may not be enough to characterize the global geometry of the embedding space comprehensively. To address this problem, we perform linear interpolation on embeddings to adaptively manipulate their hard levels and generate corresponding label-preserving synthetics for recycled training, so that information buried in all samples can be fully exploited and the metric is always challenged with proper difficulty. Our method achieves very competitive performance on the widely used CUB-200-2011, Cars196, and Stanford Online Products datasets.

Wenzhao Zheng, Zhaodong Chen, Jiwen Lu, Jie Zhou• 2019

Related benchmarks

TaskDatasetResultRank
Image RetrievalCUB-200-2011 (test)
Recall@153.7
251
Image RetrievalStanford Online Products (test)
Recall@168.7
220
Image RetrievalCARS196 (test)
Recall@179.1
134
Deep Metric LearningCUB200 2011 (test)
Recall@153.7
129
Image RetrievalCARS 196 (test)
Recall@179.1
56
Deep Metric LearningCARS196 (test)
R@179.1
56
Deep Metric LearningCARS196
Recall@179.1
50
Image RetrievalStanford Online Products
Recall@168.7
49
Deep Metric LearningSOP (test)
Recall@168.7
32
ClusteringCARS 196 (test)
NMI69.7
21
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