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Main Authors: Yang, Yuchen, Shao, Yuqing, Huang, Duxiu, Dong, Linfeng, Liu, Yifei, Tang, Suixin, Zhou, Xiang, Gao, Yuanyuan, Wang, Wei, Zhou, Yue, Yang, Xue, Wang, Yanfeng, Sun, Xiao, Zhong, Zhihang
Format: Preprint
Published: 2026
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Online Access:https://arxiv.org/abs/2603.09896
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author Yang, Yuchen
Shao, Yuqing
Huang, Duxiu
Dong, Linfeng
Liu, Yifei
Tang, Suixin
Zhou, Xiang
Gao, Yuanyuan
Wang, Wei
Zhou, Yue
Yang, Xue
Wang, Yanfeng
Sun, Xiao
Zhong, Zhihang
author_facet Yang, Yuchen
Shao, Yuqing
Huang, Duxiu
Dong, Linfeng
Liu, Yifei
Tang, Suixin
Zhou, Xiang
Gao, Yuanyuan
Wang, Wei
Zhou, Yue
Yang, Xue
Wang, Yanfeng
Sun, Xiao
Zhong, Zhihang
contents Sports have long attracted broad attention as they push the limits of human physical and cognitive capabilities. Amid growing interest in spatial intelligence for vision-language models (VLMs), sports provide a natural testbed for understanding high-intensity human motion and dynamic object interactions. To this end, we present CourtSI, the first large-scale spatial intelligence dataset tailored to sports scenarios. CourtSI contains over 1M QA pairs, organized under a holistic taxonomy that systematically covers spatial counting, distance measurement, localization, and relational reasoning, across representative net sports including badminton, tennis, and table tennis. Leveraging well-defined court geometry as metric anchors, we develop a semi-automatic data engine to reconstruct sports scenes, enabling scalable curation of CourtSI. In addition, we introduce CourtSI-Bench, a high-quality evaluation benchmark comprising 3,686 QA pairs with rigorous human verification. We evaluate 25 proprietary and open-source VLMs on CourtSI-Bench, revealing a remaining human-AI performance gap and limited generalization from existing spatial intelligence benchmarks. These findings indicate that sports scenarios expose limitations in spatial intelligence capabilities captured by existing benchmarks. Further, fine-tuning Qwen3-VL-8B on CourtSI improves accuracy on CourtSI-Bench by 23.5 percentage points. The adapted model also generalizes effectively to CourtSI-Ext, an evaluation set built on a similar but unseen sport, and demonstrates enhanced spatial-aware commentary generation. Together, these findings demonstrate that CourtSI provides a scalable pathway toward advancing spatial intelligence of VLMs in sports.
format Preprint
id arxiv_https___arxiv_org_abs_2603_09896
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Stepping VLMs onto the Court: Benchmarking Spatial Intelligence in Sports
Yang, Yuchen
Shao, Yuqing
Huang, Duxiu
Dong, Linfeng
Liu, Yifei
Tang, Suixin
Zhou, Xiang
Gao, Yuanyuan
Wang, Wei
Zhou, Yue
Yang, Xue
Wang, Yanfeng
Sun, Xiao
Zhong, Zhihang
Computer Vision and Pattern Recognition
Sports have long attracted broad attention as they push the limits of human physical and cognitive capabilities. Amid growing interest in spatial intelligence for vision-language models (VLMs), sports provide a natural testbed for understanding high-intensity human motion and dynamic object interactions. To this end, we present CourtSI, the first large-scale spatial intelligence dataset tailored to sports scenarios. CourtSI contains over 1M QA pairs, organized under a holistic taxonomy that systematically covers spatial counting, distance measurement, localization, and relational reasoning, across representative net sports including badminton, tennis, and table tennis. Leveraging well-defined court geometry as metric anchors, we develop a semi-automatic data engine to reconstruct sports scenes, enabling scalable curation of CourtSI. In addition, we introduce CourtSI-Bench, a high-quality evaluation benchmark comprising 3,686 QA pairs with rigorous human verification. We evaluate 25 proprietary and open-source VLMs on CourtSI-Bench, revealing a remaining human-AI performance gap and limited generalization from existing spatial intelligence benchmarks. These findings indicate that sports scenarios expose limitations in spatial intelligence capabilities captured by existing benchmarks. Further, fine-tuning Qwen3-VL-8B on CourtSI improves accuracy on CourtSI-Bench by 23.5 percentage points. The adapted model also generalizes effectively to CourtSI-Ext, an evaluation set built on a similar but unseen sport, and demonstrates enhanced spatial-aware commentary generation. Together, these findings demonstrate that CourtSI provides a scalable pathway toward advancing spatial intelligence of VLMs in sports.
title Stepping VLMs onto the Court: Benchmarking Spatial Intelligence in Sports
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2603.09896