Multi-View Perceptron: a Deep Model for Learning Face Identity and View Representations

Zhu, Zhenyao, Luo, Ping, Wang, Xiaogang, Tang, Xiaoou

Neural Information Processing Systems 

Various factors, such as identities, views (poses), and illuminations, are coupled in face images. Disentangling the identity and view representations is a major challenge in face recognition. Existing face recognition systems either use handcrafted features or learn features discriminatively to improve recognition accuracy. This is different from the behavior of human brain. Intriguingly, even without accessing 3D data, human not only can recognize face identity, but can also imagine face images of a person under different viewpoints given a single 2D image, making face perception in the brain robust to view changes.