2021 9th International Conference on Affective Computing and Intelligent Interaction Workshops and Demos (ACIIW) 2021
DOI: 10.1109/aciiw52867.2021.9666322
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The AffectMove 2021 Challenge - Affect Recognition from Naturalistic Movement Data

Abstract: We ran the first Affective Movement Recognition (AffectMove) challenge that brings together datasets of affective bodily behaviour across different real-life applications to foster work in this area. Research on automatic detection of naturalistic affective body expressions is still lagging behind detection based on other modalities whereas movement behaviour modelling is a very interesting and very relevant research problem for the affective computing community. The AffectMove challenge aimed to take advantag… Show more

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Cited by 2 publications
(7 citation statements)
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“…The AffectMove 2021 Challenge [4] is divided into three tasks. Task 1 of the competition promotes protective behavior detection based on subjects with chronic musculoskeletal pain from the Emopain dataset [28].…”
Section: ) Emopain 2021 Datasetmentioning
confidence: 99%
“…The AffectMove 2021 Challenge [4] is divided into three tasks. Task 1 of the competition promotes protective behavior detection based on subjects with chronic musculoskeletal pain from the Emopain dataset [28].…”
Section: ) Emopain 2021 Datasetmentioning
confidence: 99%
“…In the following we index by t ∈ 1, 180 the different timesteps composing a given input to classify. 1 For a timestep t, we also denote respectively the 4×1D EMG input values and the 17×3D MoCap input values by x t EM G ∈ R 4 , and x t M OC ∈ R 51 respectively. In this section x t = (x t EM G , x t M OC ) is the concatenation of the two vectors x t EM G and x t M OC at time t (x t ∈ R 55 ).…”
Section: B Transformer-based Architecturesmentioning
confidence: 99%
“…In this section x t = (x t EM G , x t M OC ) is the concatenation of the two vectors x t EM G and x t M OC at time t (x t ∈ R 55 ). The input provided to the transformer model was X = [x (1) , . .…”
Section: B Transformer-based Architecturesmentioning
confidence: 99%
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