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Deep Metric Learning with Angular Loss

About

The modern image search system requires semantic understanding of image, and a key yet under-addressed problem is to learn a good metric for measuring the similarity between images. While deep metric learning has yielded impressive performance gains by extracting high level abstractions from image data, a proper objective loss function becomes the central issue to boost the performance. In this paper, we propose a novel angular loss, which takes angle relationship into account, for learning better similarity metric. Whereas previous metric learning methods focus on optimizing the similarity (contrastive loss) or relative similarity (triplet loss) of image pairs, our proposed method aims at constraining the angle at the negative point of triplet triangles. Several favorable properties are observed when compared with conventional methods. First, scale invariance is introduced, improving the robustness of objective against feature variance. Second, a third-order geometric constraint is inherently imposed, capturing additional local structure of triplet triangles than contrastive loss or triplet loss. Third, better convergence has been demonstrated by experiments on three publicly available datasets.

Jian Wang, Feng Zhou, Shilei Wen, Xiao Liu, Yuanqing Lin• 2017

Related benchmarks

TaskDatasetResultRank
Image RetrievalCUB-200-2011 (test)
Recall@154.7
251
Image RetrievalStanford Online Products (test)
Recall@170.9
220
Image RetrievalCUB-200 2011
Recall@154.7
146
Image RetrievalCARS196 (test)
Recall@171.4
134
Image RetrievalCARS196
Recall@171.4
56
Image RetrievalCARS 196 (test)
Recall@171.3
56
Image RetrievalStanford Online Products
Recall@170.9
49
ClusteringCARS 196 (test)
NMI62.4
21
Image ClusteringStanford Online Products (test)
NMI87.8
11
Image Retrieval and ClusteringCUB-200 2011
R@10.547
10
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