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Motion-Based Activities Monitoring through Biometric Sensors Using Genetic Algorithm

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摘要 Sensors and physical activity evaluation are quite limited for motionbased commercial devices.Sometimes the accelerometer of the smartwatch is utilized;walking is investigated.The combination can perform better in terms of sensors and that can be determined by sensors on both the smartwatch and phones,i.e.,accelerometer and gyroscope.For biometric efficiency,some of the diverse activities of daily routine have been evaluated,also with biometric authentication.The result shows that using the different computing techniques in phones and watch for biometric can provide a suitable output based on the mentioned activities.This indicates that the high feasibility and results of continuous biometrics analysis in terms of average daily routine activities.In this research,the set of rules with the real-valued attributes are evolved with the use of a genetic algorithm.With the help of real value genes,the real value attributes cab be encoded,and presentation of new methods which are represents not to cares in the rules.The rule sets which help in maximizing the number of accurate classifications of inputs and supervise classifications are viewed as an optimization problem.The use of Pitt approach to the ML(Machine Learning)and Genetic based system that includes a resolution mechanism among rules that are competing within the same rule sets is utilized.This enhances the efficiency of the overall system,as shown in the research.
出处 《Computers, Materials & Continua》 SCIE EI 2021年第3期2525-2538,共14页 计算机、材料和连续体(英文)
基金 Deanship of Scientific Research at Majmaah University for supporting this work under Project Number No.RGP-2019-26.
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  • 1H. Ye, T. Gu, X. Zhu, J. Xu, X. Tao, J. Lu, and N. Jin, Ftrack: Infrastructure-free floor localization via mobile phone sensing, in Proc. Int. Pervasive Computing and Communications Conf., Lugano, Switzerland, 2012, pp. 2- 10.
  • 2A. Ofstad, E. Nicholas, R. Szcodronski, and R. R. Choudhury, Aampl: Accelerometer augmented mobile phone localization, in Proc. 1st Int. Mobile Entity Localization and Tracking in GPS-Less Environments Workshop, San Francisco, USA, 2008, pp. 13-18.
  • 3S. Kozina, H. Gjoreski, M. Gams, and M. Lugtrek, Efficient activity recognition and fall detection using accelerometers, in Evaluating AAL Systems Through Competitive Benchmarking, Springer, 2013, pp. 13-23.
  • 4Fitbit, Sensors overview, http://www.fitbit.com/one, 2014, Mar. 17.
  • 5A. Avci, S. Bosch, M. Marin-Perianu, R. Marin-Perianu, and E Havinga, Activity recognition using inertial sensing for healthcare, wellbeing and sports applications: A survey, in Proc. 23rd Int. Architecture of Computing Systems Conf., Hannover, Germany, 2010, pp. 1-10.
  • 6J. W. Lockhart, T. Pulickal, and G. M. Weiss, Applications of mobile activity recognition, in Proc. 14th Int. Ubiquitous Computing Conf, Seattle, USA, 2012, pp. 1054-1058.
  • 7O. D. Incel, M. Kose, and C. Ersoy, A review and taxonomy of activity recognition on mobile phones, BioNanoScience, vol. 3, no. 2, pp. 145-171, 2013.
  • 8O. D. Lara and M. A. Labrador, A survey on human activity recognition using wearable sensors, Communications Surveys & Tutorials, IEEE, vol. 15, no. 3, pp. 1192-1209, 2013.
  • 9N. D. Lane, E. Miluzzo, H. Lu, D. Peebles, T. Choudhury, and A. T. Campbell, A survey of mobile phone sensing, Communications Magazine, 1EEE, vol. 48, no. 9, pp. 140- 150, 2010.
  • 10H. E Rashvand and K.-E Hsiao, Smartphone intelligent applications: A brief review, Multimedia Systems, pp. 1- 17, 2013.

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