Ghosh, IndrajeetRamamurthy, Sreenivasan RamasamyChakma, AvijoyRoy, Nirmalya2024-08-202024-08-202022-05-14Ghosh, Indrajeet, Sreenivasan Ramasamy Ramamurthy, Avijoy Chakma, and Nirmalya Roy. “DeCoach: Deep Learning-Based Coaching for Badminton Player Assessment.” Pervasive and Mobile Computing 83 (July 1, 2022): 101608. https://doi.org/10.1016/j.pmcj.2022.101608.https://doi.org/10.1016/j.pmcj.2022.101608http://hdl.handle.net/11603/35709Wearable devices have gained immense popularity among various pervasive computing and Internet-of-Things (IoT) applications in the past decade. Sports analytics researchers recently focused on improving a player’s performance to help devise a winning strategy based on the player’s gameplay. Especially in a racquet-based badminton sport, it is assumed that handling the racquet during the gameplay is one of the primary reasons to influence the players’ performance. On the contrary, we posit that the players’ stance, body movements, and posture are equally significant in evaluating a player’s performance during the game. A shot characterized by a recommended posture, stance, and body movements allows a player to play a stroke efficiently, thus aiding the player in guiding the shuttle to strategic spots and making it difficult for the opponent to return the shot and score a point. Relying on this hypothesis, we propose DeCoach, a data-driven framework that leverages the stance and posture of the players and ranks them based on their performances. In this effort, we first employ a deep learning-based algorithm to classify the strokes and stances of the players. Secondly, we propose a distance-based methodology to compare the obtained stance of a player with that of a professional player. Finally, we devise a deep learning-based regressor to predict the player’s performance which commences with ranking based on their performance. We evaluate DeCoach using our in-house dataset, Badminton Activity Recognition (BAR) Dataset that is collected using inertial measurement unit (IMU) sensors by placing them on the upper and lower limbs of the players. The BAR dataset is collected from 11 players in the controlled and uncontrolled environment settings for 12 frequently played shots in the game. Empirical results indicate that DeCoach achieves 89.09% accuracy for strokes detection and R² score of 88.84% in estimating the players’ performance.20 pagesen-USAttribution-NonCommercial-NoDerivatives 4.0 Internationalhttps://creativecommons.org/licenses/by-nc-nd/4.0/BadmintonAssessmentCoachingScoringErrorDeep learningRacquet sportsUMBC Mobile, Pervasive and Sensor Computing Lab (MPSC Lab)Sports analyticsActivity recognitionDeCoach: Deep Learning-based Coaching for Badminton Player AssessmentText