论文标题
切片和dicing足球:从时空数据中自动检测复杂事件
Slicing and dicing soccer: automatic detection of complex events from spatio-temporal data
论文作者
论文摘要
体育视频中事件的自动检测具有非常重要的应用程序,可用于数据分析以及广播和媒体公司。本文提出了一种全面的方法,用于从位置数据开始的足球视频中取消各种复杂事件。该事件检测器被设计为一个两层系统,可进行探测,可进行探测。检测到的原子事件是检测到的对象的时间和逻辑组合,它们的相关距离以及时空特征,例如速度和速度。复杂的事件被定义为原子和复杂事件的时间和逻辑分组,并通过声明性的间隔时间逻辑(ITL)表示。在16个不同的事件中,证明了该方法的有效性,包括复杂情况,例如铲球和过滤通行证。通过基于原则上的ITL的形式化events,可以轻松执行理性任务,例如了解哪个通过或交叉导致射门得分。为了平衡缺乏合适的带注释的公共数据集,我们建立在开源足球模拟引擎上,以重新出租合成足球(足球事件识别)数据集,其中包括超过16000万头龙原子原子事件和9,000个复杂事件的完整位置数据和注释。数据集和代码可在https://gitlab.com/grains2/slicing-and-dicing-soccer上
The automatic detection of events in sport videos has im-portant applications for data analytics, as well as for broadcasting andmedia companies. This paper presents a comprehensive approach for de-tecting a wide range of complex events in soccer videos starting frompositional data. The event detector is designed as a two-tier system thatdetectsatomicandcomplex events. Atomic events are detected basedon temporal and logical combinations of the detected objects, their rel-ative distances, as well as spatio-temporal features such as velocity andacceleration. Complex events are defined as temporal and logical com-binations of atomic and complex events, and are expressed by meansof a declarative Interval Temporal Logic (ITL). The effectiveness of theproposed approach is demonstrated over 16 different events, includingcomplex situations such as tackles and filtering passes. By formalizingevents based on principled ITL, it is possible to easily perform reason-ing tasks, such as understanding which passes or crosses result in a goalbeing scored. To counterbalance the lack of suitable, annotated publicdatasets, we built on an open source soccer simulation engine to re-lease the synthetic SoccER (Soccer Event Recognition) dataset, whichincludes complete positional data and annotations for more than 1.6 mil-lion atomic events and 9,000 complex events. The dataset and code areavailable at https://gitlab.com/grains2/slicing-and-dicing-soccer