Switchable K-Class Hyperplanes for Noise-Robust Representation Learning

Boxiao Liu, Guanglu Song, Manyuan Zhang, Haihang You, Yu Liu; Proceedings of the IEEE/CVF International Conference on Computer Vision (ICCV), 2021, pp. 3019-3028

Abstract


Optimizing the K-class hyperplanes in the latent space has become the standard paradigm for efficient representation learning. However, it's almost impossible to find an optimal K-class hyperplane to accurately describe the latent space of massive noisy data. For this potential problem, we constructively propose a new method, named Switchable K-class Hyperplanes (SKH), to sufficiently describe the latent space by the mixture of K-class hyperplanes. It can directly replace the conventional single K-class hyperplane optimization as the new paradigm for noise-robust representation learning. When collaborated with the popular ArcFace on million-level data representation learning, we found that the switchable manner in SKH can effectively eliminate the gradient conflict generated by real-world label noise on a single K-class hyperplane. Moreover, combined with the margin-based loss functions (e.g. ArcFace), we propose a simple Posterior Data Clean strategy to reduce the model optimization deviation on clean dataset caused by the reduction of valid categories in each K-class hyperplane. Extensive experiments demonstrate that the proposed SKH easily achieves new state-of-the-art on IJB-B and IJB-C by encouraging noise-robust representation learning.

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[bibtex]
@InProceedings{Liu_2021_ICCV, author = {Liu, Boxiao and Song, Guanglu and Zhang, Manyuan and You, Haihang and Liu, Yu}, title = {Switchable K-Class Hyperplanes for Noise-Robust Representation Learning}, booktitle = {Proceedings of the IEEE/CVF International Conference on Computer Vision (ICCV)}, month = {October}, year = {2021}, pages = {3019-3028} }