2024
DOI: 10.1109/tnsre.2024.3392161
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E-BabyNet: Enhanced Action Recognition of Infant Reaching in Unconstrained Environments

Amel Dechemi,
Konstantinos Karydis

Abstract: Machine vision and artificial intelligence hold promise across healthcare applications. In this paper, we focus on the emerging research direction of infant action recognition, and we specifically consider the task of reaching which is an important developmental milestone. We develop E-babyNet, a lightweight yet effective neuralnetwork-based framework for infant action recognition that leverages the spatial and temporal correlation of bounding boxes of infants' hands and objects to reach for to determine the o… Show more

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