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Facial Expression Recognition with Swin Transformer

2022-03-25 06:42:31
Jun-Hwa Kim, Namho Kim, Chee Sun Won

Abstract

The task of recognizing human facial expressions plays a vital role in various human-related systems, including health care and medical fields. With the recent success of deep learning and the accessibility of a large amount of annotated data, facial expression recognition research has been mature enough to be utilized in real-world scenarios with audio-visual datasets. In this paper, we introduce Swin transformer-based facial expression approach for an in-the-wild audio-visual dataset of the Aff-Wild2 Expression dataset. Specifically, we employ a three-stream network (i.e., Visual stream, Temporal stream, and Audio stream) for the audio-visual videos to fuse the multi-modal information into facial expression recognition. Experimental results on the Aff-Wild2 dataset show the effectiveness of our proposed multi-modal approaches.

Abstract (translated)

URL

https://arxiv.org/abs/2203.13472

PDF

https://arxiv.org/pdf/2203.13472.pdf


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