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Autor principal: Bello, Hymalai
Format: Preprint
Publicat: 2024
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Accés en línia:https://arxiv.org/abs/2404.16005
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author Bello, Hymalai
author_facet Bello, Hymalai
contents Combining different sensing modalities with multiple positions helps form a unified perception and understanding of complex situations such as human behavior. Hence, human activity recognition (HAR) benefits from combining redundant and complementary information (Unimodal/Multimodal). Even so, it is not an easy task. It requires a multidisciplinary approach, including expertise in sensor technologies, signal processing, data fusion algorithms, and domain-specific knowledge. This Ph.D. work employs sensing modalities such as inertial, pressure (audio and atmospheric pressure), and textile capacitive sensing for HAR. The scenarios explored are gesture and hand position tracking, facial and head pattern recognition, and body posture and gesture recognition. The selected wearable devices and sensing modalities are fully integrated with machine learning-based algorithms, some of which are implemented in the embedded device, on the edge, and tested in real-time.
format Preprint
id arxiv_https___arxiv_org_abs_2404_16005
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Unimodal and Multimodal Sensor Fusion for Wearable Activity Recognition
Bello, Hymalai
Machine Learning
Signal Processing
Combining different sensing modalities with multiple positions helps form a unified perception and understanding of complex situations such as human behavior. Hence, human activity recognition (HAR) benefits from combining redundant and complementary information (Unimodal/Multimodal). Even so, it is not an easy task. It requires a multidisciplinary approach, including expertise in sensor technologies, signal processing, data fusion algorithms, and domain-specific knowledge. This Ph.D. work employs sensing modalities such as inertial, pressure (audio and atmospheric pressure), and textile capacitive sensing for HAR. The scenarios explored are gesture and hand position tracking, facial and head pattern recognition, and body posture and gesture recognition. The selected wearable devices and sensing modalities are fully integrated with machine learning-based algorithms, some of which are implemented in the embedded device, on the edge, and tested in real-time.
title Unimodal and Multimodal Sensor Fusion for Wearable Activity Recognition
topic Machine Learning
Signal Processing
url https://arxiv.org/abs/2404.16005