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Main Authors: Tian, Wenbo, Lin, Ruting, Zheng, Hongxian, Yang, Yaodong, Wu, Geng, Zhang, Zihao, Zhang, Zhang
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2512.14121
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author Tian, Wenbo
Lin, Ruting
Zheng, Hongxian
Yang, Yaodong
Wu, Geng
Zhang, Zihao
Zhang, Zhang
author_facet Tian, Wenbo
Lin, Ruting
Zheng, Hongxian
Yang, Yaodong
Wu, Geng
Zhang, Zihao
Zhang, Zhang
contents Existing intelligent sports analysis systems mainly focus on "scoring and visualization," often lacking automatic performance diagnosis and interpretable training guidance. Recent advances in Large Language Models (LLMs) and motion analysis techniques provide new opportunities to address the above limitations. In this paper, we propose SportsGPT, an LLM-driven framework for interpretable sports motion assessment and training guidance, which establishes a closed loop from motion time-series input to professional training guidance. First, given a set of high-quality target models, we introduce MotionDTW, a two-stage time series alignment algorithm designed for accurate keyframe extraction from skeleton-based motion sequences. Subsequently, we design a Knowledge-based Interpretable Sports Motion Assessment Model (KISMAM) to obtain a set of interpretable assessment metrics (e.g., insufficient extension) by contrasting the keyframes with the target models. Finally, we propose SportsRAG, a RAG-based training guidance model built upon Qwen3. Leveraging a 6B-token knowledge base, it prompts the LLM to generate professional training guidance by retrieving domain-specific QA pairs. Experimental results demonstrate that MotionDTW significantly outperforms traditional methods with lower temporal error and higher IoU scores. Furthermore, ablation studies validate the KISMAM and SportsRAG, confirming that SportsGPT surpasses general LLMs in diagnostic accuracy and professionalism.
format Preprint
id arxiv_https___arxiv_org_abs_2512_14121
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle SportsGPT: An LLM-driven Framework for Interpretable Sports Motion Assessment and Training Guidance
Tian, Wenbo
Lin, Ruting
Zheng, Hongxian
Yang, Yaodong
Wu, Geng
Zhang, Zihao
Zhang, Zhang
Computer Vision and Pattern Recognition
Artificial Intelligence
Existing intelligent sports analysis systems mainly focus on "scoring and visualization," often lacking automatic performance diagnosis and interpretable training guidance. Recent advances in Large Language Models (LLMs) and motion analysis techniques provide new opportunities to address the above limitations. In this paper, we propose SportsGPT, an LLM-driven framework for interpretable sports motion assessment and training guidance, which establishes a closed loop from motion time-series input to professional training guidance. First, given a set of high-quality target models, we introduce MotionDTW, a two-stage time series alignment algorithm designed for accurate keyframe extraction from skeleton-based motion sequences. Subsequently, we design a Knowledge-based Interpretable Sports Motion Assessment Model (KISMAM) to obtain a set of interpretable assessment metrics (e.g., insufficient extension) by contrasting the keyframes with the target models. Finally, we propose SportsRAG, a RAG-based training guidance model built upon Qwen3. Leveraging a 6B-token knowledge base, it prompts the LLM to generate professional training guidance by retrieving domain-specific QA pairs. Experimental results demonstrate that MotionDTW significantly outperforms traditional methods with lower temporal error and higher IoU scores. Furthermore, ablation studies validate the KISMAM and SportsRAG, confirming that SportsGPT surpasses general LLMs in diagnostic accuracy and professionalism.
title SportsGPT: An LLM-driven Framework for Interpretable Sports Motion Assessment and Training Guidance
topic Computer Vision and Pattern Recognition
Artificial Intelligence
url https://arxiv.org/abs/2512.14121