End-to-end semantic face segmentation with conditional random fields as convolutional, recurrent and adversarial networks
This work addresses semantic segmentation for faces, which is an incremental improvement combining existing techniques.
The paper tackles semantic face segmentation by integrating conditional random fields with convolutional, recurrent, and adversarial networks into an end-to-end trainable model, achieving state-of-the-art results on two standard benchmark datasets.
Recent years have seen a sharp increase in the number of related yet distinct advances in semantic segmentation. Here, we tackle this problem by leveraging the respective strengths of these advances. That is, we formulate a conditional random field over a four-connected graph as end-to-end trainable convolutional and recurrent networks, and estimate them via an adversarial process. Importantly, our model learns not only unary potentials but also pairwise potentials, while aggregating multi-scale contexts and controlling higher-order inconsistencies. We evaluate our model on two standard benchmark datasets for semantic face segmentation, achieving state-of-the-art results on both of them.