Video analysis of hockey play in selected game situations

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We present a proof of concept system to represent and reason about hockey play. The system takes as input player motion trajectory data tracked from game video and supported by knowledge of hockey strategy, game situation and specific player profiles. The raw motion trajectory data consists of space-time point sequences of player position registered to rink coordinates. The raw data is augmented with knowledge of forward/backward skating, possession of the puck and specific player attributes (e.g., shoots left, shoots right). We use a Finite State Machine (FSM) model to represent our total knowledge of each given situation. Most state transitions correspond to specific player actions (e.g., pass, shoot). Each transition has an associated Event Evaluation Function (EEF) to assign an immediate “reward” to the associated action. EEFs can take into account each player’s spatio-temporal trajectory. Based on the augmented trajectory data, the FSMs and the EEFs, we describe what happened in each identified situation, assess the outcome, estimate when and where key play choices were made, and attempt to predict whether better alternatives were available to achieve understood goals. A textual natural language description and a simple 2D graphic animation of the analysis are produced as the output. The design is flexible to allow the substitution of different analysis modules and extensible to allow the inclusion of additional hockey situations. This paper extends the one published in CRV2005.

论文关键词:Visual tracking,Motion analysis,Finite state machine

论文评审过程:Received 10 November 2005, Revised 2 September 2006, Accepted 20 October 2006, Available online 27 December 2006.

论文官网地址:https://doi.org/10.1016/j.imavis.2006.10.010