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        Predictive model for the identification of activities of daily living (ADL) in indoor environments using classification techniques based on Machine Learning

        Fecha
        2021
        Registro en:
        18770509
        https://hdl.handle.net/20.500.12442/8604
        https://doi.org/10.1016/j.procs.2021.07.069
        https://www.sciencedirect.com/science/article/pii/S1877050921014721?via%3Dihub
        https://repositorioslatinoamericanos.uchile.cl/handle/2250/5183992
        Autor
        García-Restrepo, Johanna
        Ariza-Colpas, Paola Patricia
        Oñate-Bowen, Alvaro Agustín
        Suarez-Brieva, Eydy del Carmen
        Urina-Triana, Miguel
        De-la-Hoz-Franco, Emiro
        Díaz-Martínez, Jorge Luis
        Butt, Shariq Aziz
        Molina_Estren, Diego
        Institución
        • Universidad Simón Bolívar (Colombia)
        Resumen
        AI-based techniques have included countless applications within the engineering field. These range from the automation of important procedures in Industry and companies, to the field of Process Control. Smart Home (SH) technology is designed to help house residents improve their daily activities and therefore enrich the quality of life while preserving their privacy. An SH system is usually equipped with a collection of software interrelated with hardware components to monitor the living space by capturing the behavior of the resident and their occupations. By doing so, the system can report risks, situations, and act on behalf of the resident to their satisfaction. This research article shows the experimentation carried out with the human activity recognition dataset, CASAS Kyoto, through preprocessing and cleaning processes of the data, showing the Vía Regression classifier as an excellent option to process this type of data with an accuracy 99.7% effective
        Materias
        HAR
        Human Activity Recognition
        Machine Learning
        ADL
        Activity Daily Living

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        Red de Repositorios Latinoamericanos
        + de 8.000.000 publicaciones disponibles
        500 instituciones participantes
        Dirección de Servicios de Información y Bibliotecas (SISIB)
        Universidad de Chile
        Ingreso Administradores
        Colecciones destacadas
        • Tesis latinoamericanas
        • Tesis argentinas
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        • Argentina
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        Dirección de Servicios de Información y Bibliotecas (SISIB)
        Universidad de Chile
        Red de Repositorios Latinoamericanos | 2006-2018