Enriched Long-Term Recurrent Convolutional Network for Facial Micro-Expression Recognition 论文

2018引用 225
Emotion and Mood RecognitionSpeech and Audio ProcessingHand Gesture Recognition Systems

详细信息

发表日期
2018-05-01
发表年份
2018

关键词

Emotion and Mood RecognitionSpeech and Audio ProcessingHand Gesture Recognition Systems

摘要

Facial micro-expression (ME) recognition has posed a huge challenge to researchers for its subtlety in motion and limited databases. Recently, handcrafted techniques have achieved superior performance in micro-expression recognition but at the cost of domain specificity and cumbersome parametric tunings. In this paper, we propose an Enriched Long-term Recurrent Convolutional Network (ELRCN) that first encodes each micro-expression frame into a feature vector through CNN module(s), then predicts the micro-expression by passing the feature vector through a Long Short-term Memory (LSTM) module. The framework contains 2 different network variants: (1) Channel-wise stacking of input data for spatial enrichment, (2) Feature-wise stacking of features for temporal enrichment. We demonstrate that the proposed approach is able to achieve reasonably good performance, without data augmentation. In addition, we also present ablation studies conducted on the framework and visualizations of what CNN "sees" when predicting the micro-expression classes.