CVJul 7, 2021

Action Units Recognition Using Improved Pairwise Deep Architecture

arXiv:2107.03143v210 citations
Originality Synthesis-oriented
AI Analysis

This is an incremental improvement for applications in marketing, healthcare, and education.

The paper tackles the challenge of improving facial Action Units (AUs) recognition accuracy by introducing a new technique to reduce errors from temporary face occlusions, achieving a score of 0.65 on the validation dataset.

Facial Action Units (AUs) represent a set of facial muscular activities and various combinations of AUs can represent a wide range of emotions. AU recognition is often used in many applications, including marketing, healthcare, education, and so forth. Although a lot of studies have developed various methods to improve recognition accuracy, it still remains a major challenge for AU recognition. In the Affective Behavior Analysis in-the-wild (ABAW) 2020 competition, we proposed a new automatic Action Units (AUs) recognition method using a pairwise deep architecture to derive the Pseudo-Intensities of each AU and then convert them into predicted intensities. This year, we introduced a new technique to last year's framework to further reduce AU recognition errors due to temporary face occlusion such as hands on face or large face orientation. We obtained a score of 0.65 in the validation data set for this year's competition.

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