7th ABAW Competition: Multi-Task Learning and Compound Expression Recognition
Dimitrios Kollias, Stefanos Zafeiriou, Irene Kotsia, Abhinav, Dhall, Shreya Ghosh, Chunchang Shao, Guanyu Hu

TL;DR
This paper introduces the 7th ABAW Competition focusing on multi-task learning and compound expression recognition, utilizing in-the-wild datasets to advance understanding of human affective behaviors for human-centered technology development.
Contribution
It presents two new challenges with datasets, protocols, evaluation metrics, and baseline systems for multi-task affect estimation and compound expression recognition.
Findings
Baseline systems achieved measurable performance on both challenges.
Datasets and protocols facilitate standardized evaluation in affective behavior analysis.
The competition promotes progress in in-the-wild affect recognition tasks.
Abstract
This paper describes the 7th Affective Behavior Analysis in-the-wild (ABAW) Competition, which is part of the respective Workshop held in conjunction with ECCV 2024. The 7th ABAW Competition addresses novel challenges in understanding human expressions and behaviors, crucial for the development of human-centered technologies. The Competition comprises of two sub-challenges: i) Multi-Task Learning (the goal is to learn at the same time, in a multi-task learning setting, to estimate two continuous affect dimensions, valence and arousal, to recognise between the mutually exclusive classes of the 7 basic expressions and 'other'), and to detect 12 Action Units); and ii) Compound Expression Recognition (the target is to recognise between the 7 mutually exclusive compound expression classes). s-Aff-Wild2, which is a static version of the A/V Aff-Wild2 database and contains annotations for…
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Taxonomy
TopicsNatural Language Processing Techniques
