1 research outputs found
Semantic Neighborhood-Aware Deep Facial Expression Recognition
Different from many other attributes, facial expression can change in a
continuous way, and therefore, a slight semantic change of input should also
lead to the output fluctuation limited in a small scale. This consistency is
important. However, current Facial Expression Recognition (FER) datasets may
have the extreme imbalance problem, as well as the lack of data and the
excessive amounts of noise, hindering this consistency and leading to a
performance decreasing when testing. In this paper, we not only consider the
prediction accuracy on sample points, but also take the neighborhood smoothness
of them into consideration, focusing on the stability of the output with
respect to slight semantic perturbations of the input. A novel method is
proposed to formulate semantic perturbation and select unreliable samples
during training, reducing the bad effect of them. Experiments show the
effectiveness of the proposed method and state-of-the-art results are reported,
getting closer to an upper limit than the state-of-the-art methods by a factor
of 30\% in AffectNet, the largest in-the-wild FER database by now