Article ID Journal Published Year Pages File Type
4968960 Image and Vision Computing 2017 10 Pages PDF
Abstract

•We present transfer learning strategies for robust emotion recognition in the wild.•We compare and contrast a set of visual descriptors and video modeling methods.•We propose a small but effective set of summarizing functionals for video modeling.•We compare feature and score level fusion alternatives.•We report state-of-the-art results on EmotiW, Chalearn LAP FI, and CK+ corpora.

Multimodal recognition of affective states is a difficult problem, unless the recording conditions are carefully controlled. For recognition “in the wild”, large variances in face pose and illumination, cluttered backgrounds, occlusions, audio and video noise, as well as issues with subtle cues of expression are some of the issues to target. In this paper, we describe a multimodal approach for video-based emotion recognition in the wild. We propose using summarizing functionals of complementary visual descriptors for video modeling. These features include deep convolutional neural network (CNN) based features obtained via transfer learning, for which we illustrate the importance of flexible registration and fine-tuning. Our approach combines audio and visual features with least squares regression based classifiers and weighted score level fusion. We report state-of-the-art results on the EmotiW Challenge for “in the wild” facial expression recognition. Our approach scales to other problems, and ranked top in the ChaLearn-LAP First Impressions Challenge 2016 from video clips collected in the wild.

Related Topics
Physical Sciences and Engineering Computer Science Computer Vision and Pattern Recognition
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