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Sampling Matters in Deep Embedding Learning

About

Deep embeddings answer one simple question: How similar are two images? Learning these embeddings is the bedrock of verification, zero-shot learning, and visual search. The most prominent approaches optimize a deep convolutional network with a suitable loss function, such as contrastive loss or triplet loss. While a rich line of work focuses solely on the loss functions, we show in this paper that selecting training examples plays an equally important role. We propose distance weighted sampling, which selects more informative and stable examples than traditional approaches. In addition, we show that a simple margin based loss is sufficient to outperform all other loss functions. We evaluate our approach on the Stanford Online Products, CAR196, and the CUB200-2011 datasets for image retrieval and clustering, and on the LFW dataset for face verification. Our method achieves state-of-the-art performance on all of them.

Chao-Yuan Wu, R. Manmatha, Alexander J. Smola, Philipp Kr\"ahenb\"uhl• 2017

Related benchmarks

TaskDatasetResultRank
Face VerificationLFW
Mean Accuracy98.37
339
Image RetrievalCUB-200-2011 (test)
Recall@165.6
251
Image RetrievalStanford Online Products (test)
Recall@176.1
220
Image RetrievalCUB-200 2011
Recall@163.6
146
Image RetrievalCARS196 (test)
Recall@179.7
134
Deep Metric LearningCUB200 2011 (test)
Recall@165
129
In-shop clothes retrievalin-shop clothes retrieval dataset (test)
Recall@184.5
78
Image RetrievalCARS 196 (test)
Recall@186.9
56
Image RetrievalCARS196
Recall@179.6
56
Deep Metric LearningCARS196 (test)
R@179.6
56
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