MV-Sports: A Motion and Vision Sensor Integration-Based Sports Analysis System

IEEE INFOCOM(2018)

引用 32|浏览43
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摘要
Recently, intelligent sports analytics is becoming a hot area in both industry and academia for coaching, practicing tactic and technical analysis. With the growing trend of bringing sports analytics to live broadcasting, sports robots and common playfield, a low cost system that is easy to deploy and performs real-time and accurate sports analytics is very desirable. However, existing systems, such as Hawk-Eye, cannot satisfy these requirements due to various factors. In this paper, we present MV-Sports, a cost-effective system for real-time sports analysis based on motion and vision sensor integration. Taking tennis as a case study, we aim to recognize player shot types and measure ball states. For fine-grained player action recognition, we leverage motion signal for fast action highlighting and propose a long short term memory (LSTM)-based framework to integrate MV data for training and classification. For ball state measurement, we compute the initial ball state via motion sensing and devise an extended kalman filter (EKF)-based approach to combine ball motion physics-based tracking and vision positioning-based tracking to get more accurate ball state. We implement MV-Sports on commercial off-the-shelf (COTS) devices and conduct real-world experiments to evaluate the performance of our system. The results show our approach can achieve accurate player action recognition and ball state measurement with sub-second latency.
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关键词
MV-Sports,intelligent sports analytics,tactic analysis,technical analysis,sports robots,cost-effective system,real-time sports analysis,fine-grained player action recognition,long short term memory-based framework,ball state measurement,motion sensing,ball motion physics-based tracking,vision positioning,motion signal,extended Kalman filter-based approach,player action recognition,coaching,tactic practicing,live broadcasting,motion-vision sensor integration,LSTM-based framework,MV data integration,classification,EKF-based approach,vision positioning-based tracking
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