Domain Adaptation for Inertial Measurement Unit-based Human Activity
Recognition: A Survey
- URL: http://arxiv.org/abs/2304.06489v1
- Date: Fri, 7 Apr 2023 01:33:42 GMT
- Title: Domain Adaptation for Inertial Measurement Unit-based Human Activity
Recognition: A Survey
- Authors: Avijoy Chakma, Abu Zaher Md Faridee, Indrajeet Ghosh, Nirmalya Roy
- Abstract summary: Machine learning-based wearable human activity recognition (WHAR) models enable the development of smart and connected community applications.
The widespread adoption of these WHAR models is impeded by their degraded performance in the presence of data distribution heterogeneities.
Traditional machine learning algorithms and transfer learning techniques have been proposed to address the underpinning challenges of handling such data heterogeneities.
Domain adaptation is one such transfer learning techniques that has gained significant popularity in recent literature.
- Score: 1.7205106391379026
- License: http://creativecommons.org/licenses/by-nc-nd/4.0/
- Abstract: Machine learning-based wearable human activity recognition (WHAR) models
enable the development of various smart and connected community applications
such as sleep pattern monitoring, medication reminders, cognitive health
assessment, sports analytics, etc. However, the widespread adoption of these
WHAR models is impeded by their degraded performance in the presence of data
distribution heterogeneities caused by the sensor placement at different body
positions, inherent biases and heterogeneities across devices, and personal and
environmental diversities. Various traditional machine learning algorithms and
transfer learning techniques have been proposed in the literature to address
the underpinning challenges of handling such data heterogeneities. Domain
adaptation is one such transfer learning techniques that has gained significant
popularity in recent literature. In this paper, we survey the recent progress
of domain adaptation techniques in the Inertial Measurement Unit (IMU)-based
human activity recognition area, discuss potential future directions.
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