2024
DOI: 10.3390/technologies12070096
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Deep Learning for Skeleton-Based Human Activity Segmentation: An Autoencoder Approach

Md Amran Hossen,
Abdul Ghani Naim,
Pg Emeroylariffion Abas

Abstract: Automatic segmentation is essential for enhancing human activity recognition, especially given the limitations of publicly available datasets that often lack diversity in daily activities. This study introduces a novel segmentation method that utilizes skeleton data for a more accurate and efficient analysis of human actions. By employing an autoencoder, this method extracts representative features and reconstructs the dataset, using the discrepancies between the original and reconstructed data to establish a … Show more

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