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Computer Vision – ECCV 2020
Author(s) -
Andrea Vedaldi,
Horst Bischof,
Thomas Brox,
Jan-Michael Frahm
Publication year - 2020
Publication title -
lecture notes in computer science
Language(s) - English
Resource type - Book series
SCImago Journal Rank - 0.249
H-Index - 400
eISSN - 1611-3349
pISSN - 0302-9743
DOI - 10.1007/978-3-030-58595-2
Subject(s) - computer science , artificial intelligence , computer vision , artificial neural network , focus (optics) , cognitive neuroscience of visual object recognition , object (grammar) , structure from motion , object detection , deep learning , photography , computational photography , image processing , 3d single object recognition , image (mathematics) , motion estimation , computer graphics (images) , pattern recognition (psychology) , art , physics , optics , visual arts
Data augmentation methods are indispensable heuristics to boost the performance of deep neural networks, especially in image recognition tasks. Recently, several studies have shown that augmentation strategies found by search algorithms outperform hand-made strategies. Such methods employ black-box search algorithms over image transformations with continuous or discrete parameters and require a long time to obtain better strategies. In this paper, we propose a differentiable policy search pipeline for data augmentation, which is much faster than previous methods. We introduce approximate gradients for several transformation operations with discrete parameters as well as a differentiable mechanism for selecting operations. As the objective of training, we minimize the distance between the distributions of augmented and original data, which can be differentiated. We show that our method, Faster AutoAugment, achieves significantly faster searching than prior methods without a performance drop.

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