IEEE-Backed AI Golf Swing Analysis: Identifying Keyframes for Effective Self-Training
A study published on IEEE Xplore addresses the difficulty beginners face in identifying critical keyframes and body parts to correct in golf swings. The proposed AI tool analyzes motion capture data to highlight essential frames for focus, enabling users to imitate professional players more effectively. By automating the identification of correction points, it reduces cognitive load during self-training and improves skill acquisition.
This approach teaches the principle of targeted motion analysis, emphasizing that not all frames are equally important for skill improvement. It encourages users to focus on AI-identified pivotal moments rather than arbitrary imitation, streamlining practice sessions. The technique exemplifies how AI can enhance motor learning by guiding attention to biomechanically significant movements.
Researchers publishing through IEEE, such as those behind the 2022 golf swing analysis paper (DOI: 10.1109/ACCESS.2022.3145585), showcase how AI-assisted keyframe extraction improves self-training efficacy. Their work supports athletes in refining technique with less expert intervention.
Step 1: Access the IEEE Xplore document at https://ieeexplore.ieee.org/document/9913343/. Step 2: Utilize the described AI-based motion analysis framework or similar open-source tools that perform keyframe extraction (e.g., OpenPose combined with custom algorithms). Step 3: Record your golf swing, run it through the model to receive keyframe highlights, and focus your practice on the suggested critical moments for improvement.