English

SSN: Learning Sparse Switchable Normalization via SparsestMax

Computer Vision and Pattern Recognition 2019-03-12 v1

Abstract

Normalization methods improve both optimization and generalization of ConvNets. To further boost performance, the recently-proposed switchable normalization (SN) provides a new perspective for deep learning: it learns to select different normalizers for different convolution layers of a ConvNet. However, SN uses softmax function to learn importance ratios to combine normalizers, leading to redundant computations compared to a single normalizer. This work addresses this issue by presenting Sparse Switchable Normalization (SSN) where the importance ratios are constrained to be sparse. Unlike 1\ell_1 and 0\ell_0 constraints that impose difficulties in optimization, we turn this constrained optimization problem into feed-forward computation by proposing SparsestMax, which is a sparse version of softmax. SSN has several appealing properties. (1) It inherits all benefits from SN such as applicability in various tasks and robustness to a wide range of batch sizes. (2) It is guaranteed to select only one normalizer for each normalization layer, avoiding redundant computations. (3) SSN can be transferred to various tasks in an end-to-end manner. Extensive experiments show that SSN outperforms its counterparts on various challenging benchmarks such as ImageNet, Cityscapes, ADE20K, and Kinetics.

Keywords

Cite

@article{arxiv.1903.03793,
  title  = {SSN: Learning Sparse Switchable Normalization via SparsestMax},
  author = {Wenqi Shao and Tianjian Meng and Jingyu Li and Ruimao Zhang and Yudian Li and Xiaogang Wang and Ping Luo},
  journal= {arXiv preprint arXiv:1903.03793},
  year   = {2019}
}

Comments

10 pages, 6 figures, accepted to CVPR 2019

R2 v1 2026-06-23T08:03:00.841Z