“…Studies have used various sensors and data analysis methods for table tennis observations, such as video analysis to track the ball’s trajectory during service [ 11 ]; force sensors and electronic circuits to monitor the net [ 12 , 13 ] and detect ball–net impact during service [ 13 ]; inertial sensors mounted on the paddle to assess the ball’s speed and spin [ 14 ], estimate the trajectory of the paddle [ 15 ], and detect the type of stroke [ 16 , 17 ]; and inertial sensors worn on the limbs to detect shots [ 18 ], estimate kinematic parameters [ 19 ], and recognize stroke motions [ 20 , 21 , 22 , 23 , 24 , 25 , 26 ]. Machine learning classification algorithms are a reliable approach for recognizing basic human motions.…”