A Deep Cascade Network for Unaligned Face Attribute Classification

Authors

  • Hui Ding University of Maryland, College Park
  • Hao Zhou University of Maryland, College Park
  • Shaohua Zhou Siemens Healthineers, New Jersey
  • Rama Chellappa University of Maryland, College Park

DOI:

https://doi.org/10.1609/aaai.v32i1.12303

Keywords:

face attributes classification, weakly supervised localization

Abstract

Humans focus attention on different face regions when recognizing face attributes. Most existing face attribute classification methods use the whole image as input. Moreover, some of these methods rely on fiducial landmarks to provide defined face parts. In this paper, we propose a cascade network that simultaneously learns to localize face regions specific to attributes and performs attribute classification without alignment. First, a weakly-supervised face region localization network is designed to automatically detect regions (or parts) specific to attributes. Then multiple part-based networks and a whole-image-based network are separately constructed and combined together by the region switch layer and attribute relation layer for final attribute classification. A multi-net learning method and hint-based model compression is further proposed to get an effective localization model and a compact classification model, respectively. Our approach achieves significantly better performance than state-of-the-art methods on unaligned CelebA dataset, reducing the classification error by 30.9%.

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Published

2018-04-27

How to Cite

Ding, H., Zhou, H., Zhou, S., & Chellappa, R. (2018). A Deep Cascade Network for Unaligned Face Attribute Classification. Proceedings of the AAAI Conference on Artificial Intelligence, 32(1). https://doi.org/10.1609/aaai.v32i1.12303