3.8 Proceedings Paper

Recall@k Surrogate Loss with Large Batches and Similarity Mixup

Publisher

IEEE COMPUTER SOC
DOI: 10.1109/CVPR52688.2022.00735

Keywords

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Funding

  1. OP VVV [CZ.02.1.01/0.0/0.0/16019/0000765]
  2. Grant Agency of the Czech Technical University in Prague [SGS20/171/OHK3/3T/13]
  3. Project StratDL in the realm of COMET K1 center Software Competence Center Hagenberg, Amazon Research Award
  4. Junior Star GACR [GM 21-28830M]

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This work focuses on learning deep visual representation models for retrieval by exploring the interplay between a new loss function, the batch size, and a new regularization approach. The suggested method achieves state-of-the-art performance in several image retrieval benchmarks when used for deep metric learning.
This work focuses on learning deep visual representation models for retrieval by exploring the interplay between a new loss function, the batch size, and a new regularization approach. Direct optimization, by gradient descent, of an evaluation metric, is not possible when it is non-differentiable, which is the case for recall in retrieval. A differentiable surrogate loss for the recall is proposed in this work. Using an implementation that sidesteps the hardware constraints of the GPU memory, the method trains with a very large batch size, which is essential for metrics computed on the entire retrieval database. It is assisted by an efficient mixup regularization approach that operates on pairwise scalar similarities and virtually increases the batch size further. The suggested method achieves state-of-the-art performance in several image retrieval benchmarks when used for deep metric learning. For instance-level recognition, the method outperforms similar approaches that train using an approximation of average precision.

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