Action Units Recognition by Pairwise Deep Architecture
Junya Saito
Ryosuke Kawamura
A. Uchida
Sachihiro Youoku
Yuushi Toyoda
Takahisa Yamamoto
Xiaoyue Mi
Kentaro Murase

Abstract
In this paper, we propose a new automatic Action Units (AUs) recognition method used in a competition, Affective Behavior Analysis in-the-wild (ABAW). Our method tackles a problem of AUs label inconsistency among subjects by using pairwise deep architecture. While the baseline score is 0.31, our method achieved 0.67 in validation dataset of the competition.
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