3.8 Proceedings Paper

Transformer-based Multimodal Information Fusion for Facial Expression Analysis

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IEEE
DOI: 10.1109/CVPRW56347.2022.00271

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This paper introduces the author's submission to the CVPR 2022 Affective Behavior Analysis in-the-wild (ABAW) competition. The author proposes a multimodal Transformer-based framework for Action Unit detection and expression recognition, and achieves first place in the ABAW3 competition. Extensive quantitative evaluations and ablation studies on the Aff-Wild2 dataset demonstrate the effectiveness of the proposed method.
Human affective behavior analysis has received much attention in human-computer interaction (HCI). In this paper, we introduce our submission to the CVPR 2022 Competition on Affective Behavior Analysis in-the-wild (ABAW). To fully exploit affective knowledge from multiple views, we utilize the multimodal features of spoken words, speech prosody, and facial expression, which are extracted from the video clips in the Aff-Wild2 dataset. Based on these features, we propose a unified transformer-based multimodal framework for Action Unit detection and also expression recognition. Specifically, the static vision feature is first encoded from the current frame image. At the same time, we clip its adjacent frames by a sliding window and extract three kinds of multimodal features from the sequence of images, audio, and text. Then, we introduce a transformer-based fusion module that integrates the static vision features and the dynamic multimodal features. The cross-attention module in the fusion module makes the output integrated features focus on the crucial parts that facilitate the downstream detection tasks. We also leverage some data balancing techniques, data augmentation techniques, and postprocessing methods to further improve the model performance. In the official test of ABAW3 Competition, our model ranks first in the EXPR and AU tracks. The extensive quantitative evaluations, as well as ablation studies on the Aff-Wild2 dataset, prove the effectiveness of our proposed method.

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