Affiliation:
1. Department of Computer Science and Engineering, Amity University, Gwalior, Madhya Pradesh, India
2. Department of
Computer Science and Engineering, MANIT, Bhopal, India
Abstract
Background:
Human physical activity recognition is challenging in various research
eras, such as healthcare, surveillance, senior monitoring, athletics, and rehabilitation. The use
of various sensors has attracted outstanding research attention due to the implementation of
machine learning and deep learning approaches.
Aim:
This paper proposes a unique deep learning framework based on motion signals to recognize
human activity to handle these constraints and challenges through deep learning (e.g., Enhance
CNN, LR, RF, DT, KNN, and SVM) approaches.
Method:
This research article uses the BML (Biological Motion Library) dataset gathered from
thirty volunteers with four various activities to analyze the performance metrics. It compares
the evaluated results with existing results, which are found by machine learning and deep
learning methods to identify human activity.
Result:
This framework was successfully investigated with the help of laboratory metrics with
convolutional neural networks (CNN) and achieved 89.0% accuracy compared to machine
learning methods.
Conclusion:
The novel work of this research is to increase classification accuracy with a lower
error rate and faster execution. Moreover, it introduces a novel approach to human activity
recognition in the BML dataset using the CNN with Adam optimizer approach.
Funder
SERB, DST of the government of India
Publisher
Bentham Science Publishers Ltd.
Reference76 articles.
1. Chen K.; Zhang D.; Yao L.; Guo B.; Yu Z.; Liu Y.; Deep learning for sensor-based human activity recognition: Overview, challenges, and opportunities. ACM Comput Surv [CSUR].2021,54(4),1-40
2. Hussain Z.; Sheng M.; Zhang W.E.; Different approaches for human activity recognition: A survey 190605074
3. Minh Dang L.; Min K.; Wang H.; Jalil Piran M.; Hee Lee C.; Moon H.; Sensor-based and vision-based human activity recognition: A comprehensive survey. Pattern Recognit 2020,108,107561
4. Beddiar D.R.; Nini B.; Sabokrou M.; Hadid A.; Vision-based human activity recognition: A survey. Multimedia Tools Appl 2020,79(41-42),30509-30555
5. Singh D.; Psychoula I.; Kropf J.; Hanke S.; Holzinger A.; Users’ perceptions and attitudes towards innovative home technologies. In Smart Homes and Health Telematics, Designing a Better Future: Urban Assisted Living: 16th International Conference, ICOST 2018, Singapore, Singapore, July 10-12, 2018. Proceedings [Springer International Publishing].2018,16,203-214
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