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GolfPose: Golf Swing Analyses with a Monocular Camera Based Human Pose Estimation

Zhongyu Jiang, Haorui Ji, Samuel Menaker, Jenq–Neng Hwang

202215 citationsDOI

Abstract

With the rapid developments of computer vision and deep learning technologies, artificial intelligence takes a more and more important role in sports analyses. In this paper, to attain the objective of automated golf swing analyses, we propose a lightweight temporal-based 2D human pose estimation (HPE) method, called GolfPose, which achieves improved performance than the state-of-the-art image-based HPE methods. Unlike traditional image-based methods, our temporal-based method, designed for efficient and effective golf swing analyses, takes advantage of the temporal information to improve the estimation accuracy of fast-moving and partially self-occluded keypoints. Furthermore, in order to make sure the golf swing analyses can run on mobile devices, we optimize the model architecture to achieve real-time inference. With around 10% of the parameters and half of the GFLOPs used in the state-of-the-art HRNet, our proposed GolfPose model can achieve 9.16 mean pixel error (MPE) in our golf swing dataset, compared with 9.20 MPE for HRNet. Furthermore, the proposed temporal-based method, facilitated with golf club detection(GCD), significantly improves the accuracy of keypoints on the golf club from 13.98 to 9.21 MPE.

Topics & Concepts

SwingComputer scienceArtificial intelligencePoseComputer visionState (computer science)PixelMonocularInferenceEngineeringAlgorithmMechanical engineeringSports Dynamics and BiomechanicsHuman Pose and Action RecognitionAdvanced Vision and Imaging
GolfPose: Golf Swing Analyses with a Monocular Camera Based Human Pose Estimation | Litcius