V. Nastos, Alexandros Bantaloukas-Arjmand, Klevis Tsakai, D. Dimopoulos, D. Varvarousis, A. Tzallas, N. Giannakeas, A. Ploumis, Ch Gogos
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Human Activity Recognition using Machine Learning Techniques
Human activity recognition (HAR) and gait analysis are two study topics that are used to identify numerous daily activities, such as walking, running, and stair climbing, and how they are performed. The valid identification of any gait deviation, as an abnormality in the gait cycle, can help in the real-time monitoring of patients with neuromuscular and musculoskeletal causes, and eventually in the restoration of their normal gait function. The current study combines multiple data preprocessing approaches with supervised machine learning algorithms to provide a framework for recognizing diverse gait activities using data samples from the publicly accessible “HuGaDB” human gait database. The automated analysis method takes into account 3-dimensional (3D) signals derived from two types of inertial sensors: accelerometers and gyroscopes, as well as electromyography (EMG) devices placed on the right and left leg of 18 healthy human participants. The proposed tool achieves a classification accuracy of 80% and Fl-score of 79% with Random Forest emerging as the optimal gait patterns identification method.
期刊介绍:
Computer Engineering and Design is supervised by China Aerospace Science and Industry Corporation and sponsored by the 706th Institute of the Second Academy of China Aerospace Science and Industry Corporation. It was founded in 1980. The purpose of the journal is to disseminate new technologies and promote academic exchanges. Since its inception, it has adhered to the principle of combining depth and breadth, theory and application, and focused on reporting cutting-edge and hot computer technologies. The journal accepts academic papers with innovative and independent academic insights, including papers on fund projects, award-winning research papers, outstanding papers at academic conferences, doctoral and master's theses, etc.