Human Activity Recognition Using Inertial Sensors in a Smartphone: An Overview
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João Gama | Khalil El-Khatib | Eduardo Souto | Wesllen Sousa Lima | Roozbeh Jalali | João Gama | K. El-Khatib | E. Souto | Roozbeh Jalali | W. S. Lima
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