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"A Theoretically Sound Upper Bound on the Triplet Loss for Improving the ..."
Thanh-Toan Do et al. (2019)
- Thanh-Toan Do, Toan Tran, Ian D. Reid, B. G. Vijay Kumar, Tuan Hoang, Gustavo Carneiro:
A Theoretically Sound Upper Bound on the Triplet Loss for Improving the Efficiency of Deep Distance Metric Learning. CoRR abs/1904.08720 (2019)
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