2019
DOI: 10.1109/access.2019.2920969
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Human Activity Recognition Based on Motion Sensor Using U-Net

Abstract: Traditional human activity recognition (HAR) based on time series adopts sliding window analysis method. This method faces the multi-class window problem which mistakenly labels different classes of sampling points within a window as a class. In this paper, a HAR algorithm based on U-Net is proposed to perform activity labeling and prediction at each sampling point. The activity data of the triaxial accelerometer is mapped into an image with the single pixel column and multi-channel which is input into the U-N… Show more

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Cited by 96 publications
(45 citation statements)
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References 42 publications
(56 reference statements)
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“…Additionally, advanced computer vision methods can be applied to detect more complex behaviors, both on shorter and longer periods of time considering other parameters such as cell morphology, context, and space-time structures. This is in line with recent works that aim to recognize cellular motion phenotypes in in vitro cultures (87) or human actions using deep machine learning methods (88).…”
Section: Discussionsupporting
confidence: 88%
“…Additionally, advanced computer vision methods can be applied to detect more complex behaviors, both on shorter and longer periods of time considering other parameters such as cell morphology, context, and space-time structures. This is in line with recent works that aim to recognize cellular motion phenotypes in in vitro cultures (87) or human actions using deep machine learning methods (88).…”
Section: Discussionsupporting
confidence: 88%
“…The specific criteria is that the classificator is smaller than a threshold between two successive frames. Unlike the hierarchical structure, some researchers have been investigating how to assign a mark specifically for each move, rather than forecasting an entire window [127], [128]. The authors employed fullyconnected networks (FCNs) to accomplish this aim based on the semantic segmentation in the computer vision culture.…”
Section: F Data Decompositionmentioning
confidence: 99%
“…U-Net is a data segmentation architecture based on a CNN system that improves the sliding window approach in data segmentation. Research [ 169 ] employed four distinct datasets in their research, including WISDM, UCI HAPT, UCI OPPORTUNITY and the self-collected “Sanitation” dataset. Simple accuracy and F-scores were used to calculate prediction accuracy.…”
Section: Human Activity Detection Using Deep Learning Techniquesmentioning
confidence: 99%