FaceNet2ExpNet: Regularizing a Deep Face Recognition Net for Expression Recognition 论文

2017引用 406
Face recognition and analysisSpeech and Audio ProcessingHuman Pose and Action Recognition

详细信息

发表日期
2017-05-01
发表年份
2017

关键词

Face recognition and analysisSpeech and Audio ProcessingHuman Pose and Action Recognition

摘要

Relatively small data sets available for expression recognition research make the training of deep networks very challenging. Although fine-tuning can partially alleviate the issue, the performance is still below acceptable levels as the deep features probably contain redundant information from the pretrained domain. In this paper, we present FaceNet2ExpNet, a novel idea to train an expression recognition network based on static images. We first propose a new distribution function to model the high-level neurons of the expression network. Based on this, a two-stage training algorithm is carefully designed. In the pre-training stage, we train the convolutional layers of the expression net, regularized by the face net; In the refining stage, we append fully-connected layers to the pre-trained convolutional layers and train the whole network jointly. Visualization results show that the model trained with our method captures improved high-level expression semantics. Evaluations on four public expression databases, CK+, Oulu- CASIA, TFD, and SFEW demonstrate that our method achieves better results than state-of-the-art.