ToddlerAct: A Toddler Action Recognition Dataset for Gross Motor Development Assessment
Assessing gross motor development in toddlers is crucial for understanding their physical development and identifying potential developmental delays or disorders. However, existing datasets for action recognition primarily focus on adults, lacking the diversity and specificity required for accurate...
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Zusammenfassung: | Assessing gross motor development in toddlers is crucial for understanding
their physical development and identifying potential developmental delays or
disorders. However, existing datasets for action recognition primarily focus on
adults, lacking the diversity and specificity required for accurate assessment
in toddlers. In this paper, we present ToddlerAct, a toddler gross motor action
recognition dataset, aiming to facilitate research in early childhood
development. The dataset consists of video recordings capturing a variety of
gross motor activities commonly observed in toddlers aged under three years
old. We describe the data collection process, annotation methodology, and
dataset characteristics. Furthermore, we benchmarked multiple state-of-the-art
methods including image-based and skeleton-based action recognition methods on
our datasets. Our findings highlight the importance of domain-specific datasets
for accurate assessment of gross motor development in toddlers and lay the
foundation for future research in this critical area. Our dataset will be
available at https://github.com/ipl-uw/ToddlerAct. |
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DOI: | 10.48550/arxiv.2409.00349 |