Visible to the public Multi-clue Fusion for Emotion Recognition in the Wild

TitleMulti-clue Fusion for Emotion Recognition in the Wild
Publication TypeConference Paper
Year of Publication2016
AuthorsYan, Jingwei, Zheng, Wenming, Cui, Zhen, Tang, Chuangao, Zhang, Tong, Zong, Yuan, Sun, Ning
Conference NameProceedings of the 18th ACM International Conference on Multimodal Interaction
PublisherACM
Conference LocationNew York, NY, USA
ISBN Number978-1-4503-4556-9
KeywordsAFEW, convolutional neural network (CNN), emotion recognition in the wild, facial recognition, Human Behavior, Metrics, multi-clue, pubcrawl, recurrent neural network (RNN), Resiliency
Abstract

In the past three years, Emotion Recognition in the Wild (EmotiW) Grand Challenge has drawn more and more attention due to its huge potential applications. In the fourth challenge, aimed at the task of video based emotion recognition, we propose a multi-clue emotion fusion (MCEF) framework by modeling human emotion from three mutually complementary sources, facial appearance texture, facial action, and audio. To extract high-level emotion features from sequential face images, we employ a CNN-RNN architecture, where face image from each frame is first fed into the fine-tuned VGG-Face network to extract face feature, and then the features of all frames are sequentially traversed in a bidirectional RNN so as to capture dynamic changes of facial textures. To attain more accurate facial actions, a facial landmark trajectory model is proposed to explicitly learn emotion variations of facial components. Further, audio signals are also modeled in a CNN framework by extracting low-level energy features from segmented audio clips and then stacking them as an image-like map. Finally, we fuse the results generated from three clues to boost the performance of emotion recognition. Our proposed MCEF achieves an overall accuracy of 56.66% with a large improvement of 16.19% with respect to the baseline.

URLhttps://dl.acm.org/doi/10.1145/2993148.2997630
DOI10.1145/2993148.2997630
Citation Keyyan_multi-clue_2016