Abstract
This paper presents two Machine Learning models that classify time series data given from smartwatch accelerometer of observed subjects. For the purpose of classification we use Deep Neural Network and Random Forest classifier algorithms. The comparison of both models shows that they have similar performance with regard to recognition of subject's activities that are used in the test group of the dataset. Training accuracy reaches approximately 95% and 100% for Deep Learning and Random Forest model respectively. Since the validation and recognition, reached about 81% and 75% respectively, a tendency for improving accuracy as a function of number of participants is considered. The influence of data sample precision to the accuracy of the models is examined since the input data could be given from various wearable devices.
Publisher
Centre for Evaluation in Education and Science (CEON/CEES)
Subject
Mechanical Engineering,Mechanics of Materials
Reference22 articles.
1. Wang, Z., Yang, Z., Dong, T.: A Review of Wearable Technologies for Elderly Care that Can Accurately Track Indoor Position, Recognize Physical Activities and Monitor Vital Signs in Real Time, Sensors (Basel, Switzerland), Vol. 17, No. 2, 341, 2017;
2. Axisa, C.: The role of human activity recognition in healthcare: a study focusing on patients suffering from chronic illnesses, Bachelor thesis, Faculty of Economics, Management and Accountancy, University of Malta, 2017;
3. Ndahimana D, Kim E-K.: Measurement methods for physical activity and energy expenditure: a review, Clinical Nutrition Research, Vol. 6, No. 2, pp. 68-80, 2017;
4. Arakawa, T.: Recent research and developing trends of wearable sensors for detecting blood pressure, Sensors, Vol. 18, No. 9, p. 2772, 2018;
5. Villar, J.R., González, S., Sedano, J. Chira, C. and Trejo-Gabriel-Galan, J.M.: Improving human activity recognition and its application in early stroke diagnosis, International Journal of Neural Systems, Vol. 25, No. 4, 1450036, 2015;
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