2023
DOI: 10.48550/arxiv.2303.09158
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Facial Affect Recognition based on Transformer Encoder and Audiovisual Fusion for the ABAW5 Challenge

Abstract: In this paper, we present our solutions for the 5th Workshop and Competition on Affective Behavior Analysis in-the-wild (ABAW), which includes four sub-challenges of Valence-Arousal (VA) Estimation, Expression (Expr) Classification, Action Unit (AU) Detection and Emotional Reaction Intensity (ERI) Estimation. The 5th ABAW competition focuses on facial affect recognition utilizing different modalities and datasets. In our work, we extract powerful audio and visual features using a large number of sota models. T… Show more

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(1 citation statement)
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“…Moreover, we compare our results with those of ME-Graph [31], and our method outperforms theirs by an average F1-score of 3.1.These results demonstrate the effectiveness of our approach in detecting AUs. 51.0 CtyunAI [60] 48.9 HSE-NN-SberAI [39] 48.8 USTC-AC [51] 48.1 HFUT-MAC [59] 47.5 SCLAB-CNU [35] 45.6 USC-IHP [53] 42.9 Baseline [20] 36.5…”
Section: Results On Validation Setmentioning
confidence: 99%
“…Moreover, we compare our results with those of ME-Graph [31], and our method outperforms theirs by an average F1-score of 3.1.These results demonstrate the effectiveness of our approach in detecting AUs. 51.0 CtyunAI [60] 48.9 HSE-NN-SberAI [39] 48.8 USTC-AC [51] 48.1 HFUT-MAC [59] 47.5 SCLAB-CNU [35] 45.6 USC-IHP [53] 42.9 Baseline [20] 36.5…”
Section: Results On Validation Setmentioning
confidence: 99%