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Main Authors: Demrozi, Florenc, Turetta, Cristian, Pravadelli, Graziano
Format: Preprint
Published: 2021
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Online Access:https://arxiv.org/abs/2101.10870
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author Demrozi, Florenc
Turetta, Cristian
Pravadelli, Graziano
author_facet Demrozi, Florenc
Turetta, Cristian
Pravadelli, Graziano
contents Human Activity Recognition (HAR), based on machine and deep learning algorithms is considered one of the most promising technologies to monitor professional and daily life activities for different categories of people (e.g., athletes, elderly, kids, employers) in order to provide a variety of services related, for example to well-being, empowering of technical performances, prevention of risky situation, and educational purposes. However, the analysis of the effectiveness and the efficiency of HAR methodologies suffers from the lack of a standard workflow, which might represent the baseline for the estimation of the quality of the developed pattern recognition models. This makes the comparison among different approaches a challenging task. In addition, researchers can make mistakes that, when not detected, definitely affect the achieved results. To mitigate such issues, this paper proposes an open-source automatic and highly configurable framework, named B-HAR, for the definition, standardization, and development of a baseline framework in order to evaluate and compare HAR methodologies. It implements the most popular data processing methods for data preparation and the most commonly used machine and deep learning pattern recognition models.
format Preprint
id arxiv_https___arxiv_org_abs_2101_10870
institution arXiv
publishDate 2021
record_format arxiv
spellingShingle B-HAR: an open-source baseline framework for in depth study of human activity recognition datasets and workflows
Demrozi, Florenc
Turetta, Cristian
Pravadelli, Graziano
Signal Processing
Artificial Intelligence
Machine Learning
Human Activity Recognition (HAR), based on machine and deep learning algorithms is considered one of the most promising technologies to monitor professional and daily life activities for different categories of people (e.g., athletes, elderly, kids, employers) in order to provide a variety of services related, for example to well-being, empowering of technical performances, prevention of risky situation, and educational purposes. However, the analysis of the effectiveness and the efficiency of HAR methodologies suffers from the lack of a standard workflow, which might represent the baseline for the estimation of the quality of the developed pattern recognition models. This makes the comparison among different approaches a challenging task. In addition, researchers can make mistakes that, when not detected, definitely affect the achieved results. To mitigate such issues, this paper proposes an open-source automatic and highly configurable framework, named B-HAR, for the definition, standardization, and development of a baseline framework in order to evaluate and compare HAR methodologies. It implements the most popular data processing methods for data preparation and the most commonly used machine and deep learning pattern recognition models.
title B-HAR: an open-source baseline framework for in depth study of human activity recognition datasets and workflows
topic Signal Processing
Artificial Intelligence
Machine Learning
url https://arxiv.org/abs/2101.10870