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Main Authors: Müller, Philipp, Balazia, Michal, Baur, Tobias, Dietz, Michael, Heimerl, Alexander, Penzkofer, Anna, Schiller, Dominik, Brémond, François, Alexandersson, Jan, André, Elisabeth, Bulling, Andreas
Format: Preprint
Published: 2024
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Online Access:https://arxiv.org/abs/2408.16625
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author Müller, Philipp
Balazia, Michal
Baur, Tobias
Dietz, Michael
Heimerl, Alexander
Penzkofer, Anna
Schiller, Dominik
Brémond, François
Alexandersson, Jan
André, Elisabeth
Bulling, Andreas
author_facet Müller, Philipp
Balazia, Michal
Baur, Tobias
Dietz, Michael
Heimerl, Alexander
Penzkofer, Anna
Schiller, Dominik
Brémond, François
Alexandersson, Jan
André, Elisabeth
Bulling, Andreas
contents Estimating the momentary level of participant's engagement is an important prerequisite for assistive systems that support human interactions. Previous work has addressed this task in within-domain evaluation scenarios, i.e. training and testing on the same dataset. This is in contrast to real-life scenarios where domain shifts between training and testing data frequently occur. With MultiMediate'24, we present the first challenge addressing multi-domain engagement estimation. As training data, we utilise the NOXI database of dyadic novice-expert interactions. In addition to within-domain test data, we add two new test domains. First, we introduce recordings following the NOXI protocol but covering languages that are not present in the NOXI training data. Second, we collected novel engagement annotations on the MPIIGroupInteraction dataset which consists of group discussions between three to four people. In this way, MultiMediate'24 evaluates the ability of approaches to generalise across factors such as language and cultural background, group size, task, and screen-mediated vs. face-to-face interaction. This paper describes the MultiMediate'24 challenge and presents baseline results. In addition, we discuss selected challenge solutions.
format Preprint
id arxiv_https___arxiv_org_abs_2408_16625
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle MultiMediate'24: Multi-Domain Engagement Estimation
Müller, Philipp
Balazia, Michal
Baur, Tobias
Dietz, Michael
Heimerl, Alexander
Penzkofer, Anna
Schiller, Dominik
Brémond, François
Alexandersson, Jan
André, Elisabeth
Bulling, Andreas
Multimedia
Estimating the momentary level of participant's engagement is an important prerequisite for assistive systems that support human interactions. Previous work has addressed this task in within-domain evaluation scenarios, i.e. training and testing on the same dataset. This is in contrast to real-life scenarios where domain shifts between training and testing data frequently occur. With MultiMediate'24, we present the first challenge addressing multi-domain engagement estimation. As training data, we utilise the NOXI database of dyadic novice-expert interactions. In addition to within-domain test data, we add two new test domains. First, we introduce recordings following the NOXI protocol but covering languages that are not present in the NOXI training data. Second, we collected novel engagement annotations on the MPIIGroupInteraction dataset which consists of group discussions between three to four people. In this way, MultiMediate'24 evaluates the ability of approaches to generalise across factors such as language and cultural background, group size, task, and screen-mediated vs. face-to-face interaction. This paper describes the MultiMediate'24 challenge and presents baseline results. In addition, we discuss selected challenge solutions.
title MultiMediate'24: Multi-Domain Engagement Estimation
topic Multimedia
url https://arxiv.org/abs/2408.16625