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Title Real-Time Human Activity Recognition From Smart Phone Using Linear Support Vector Machines
ID_Doc 44371
Authors Maaloul K.; Brahim L.; Abdelhamid N.M.
Year 2023
Published Telkomnika (Telecommunication Computing Electronics and Control), 21, 3
DOI http://dx.doi.org/10.12928/TELKOMNIKA.v21i3.24100
Abstract The recognition of human activity (HAR) the use of cell devices embedded in its exten sively disbursed sensors affords guidance, instructions, and take care of citizens of smart cities. Consequently, it became essential to analyze human every day sports. To examine statistical models of human conduct, synthetic intelligence strategies such as machine studying can be used. Many studies have not studied type overall performance in real-time due to statistics series. To remedy this trouble, this paper proposes a structure primarily based on open supply technology and platforms consisting of Apache Kafka, for messages to flow over the internet, method them and provide shape for existing facts in real-time and formulates the trouble of identifying human pastime by using a smartphone tool as a type hassle using statistics collection by telephone sensors. The proposed version is skilled by some machine learning algorithms. The algorithm that has proven superior and quality results helps a linear vector machines © 2023,Telkomnika (Telecommunication Computing Electronics and Control). All Rights Reserved.
Author Keywords Apache Kafka; HAR; Linear support vector machine; Machine learning; Real-time; Support vector machines


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