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Learning with Batch-wise Optimal Transport Loss for 3D Shape Recognition

About

Deep metric learning is essential for visual recognition. The widely used pair-wise (or triplet) based loss objectives cannot make full use of semantical information in training samples or give enough attention to those hard samples during optimization. Thus, they often suffer from a slow convergence rate and inferior performance. In this paper, we show how to learn an importance-driven distance metric via optimal transport programming from batches of samples. It can automatically emphasize hard examples and lead to significant improvements in convergence. We propose a new batch-wise optimal transport loss and combine it in an end-to-end deep metric learning manner. We use it to learn the distance metric and deep feature representation jointly for recognition. Empirical results on visual retrieval and classification tasks with six benchmark datasets, i.e., MNIST, CIFAR10, SHREC13, SHREC14, ModelNet10, and ModelNet40, demonstrate the superiority of the proposed method. It can accelerate the convergence rate significantly while achieving a state-of-the-art recognition performance. For example, in 3D shape recognition experiments, we show that our method can achieve better recognition performance within only 5 epochs than what can be obtained by mainstream 3D shape recognition approaches after 200 epochs.

Lin Xu, Han Sun, Yuai Liu• 2019

Related benchmarks

TaskDatasetResultRank
Text-to-Video RetrievalDiDeMo (test)
R@115
376
Video-to-Text retrievalDiDeMo (test)
R@114.1
92
Partial Relevance Video RetrievalCharades-STA (test)
R@12
29
Text-to-Video RetrievalRUDDER human annotated (test)
Recall@12.85
6
Video-to-Text retrievalRUDDER human annotated (test)
R@12.85
6
Text-to-Video RetrievalCharades-STA (test)
R@12.7
5
Text-to-Video RetrievalMSR-VTT 1 caption per video
R@15.6
4
Video-to-Text retrievalMSR-VTT 1 caption per video
Recall@19.4
4
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