Probabilistic event logic for interval-based event recognition

William Brendel, Alan Fern, S. Todorovic
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引用次数: 113

Abstract

This paper is about detecting and segmenting interrelated events which occur in challenging videos with motion blur, occlusions, dynamic backgrounds, and missing observations. We argue that holistic reasoning about time intervals of events, and their temporal constraints is critical in such domains to overcome the noise inherent to low-level video representations. For this purpose, our first contribution is the formulation of probabilistic event logic (PEL) for representing temporal constraints among events. A PEL knowledge base consists of confidence-weighted formulas from a temporal event logic, and specifies a joint distribution over the occurrence time intervals of all events. Our second contribution is a MAP inference algorithm for PEL that addresses the scalability issue of reasoning about an enormous number of time intervals and their constraints in a typical video. Specifically, our algorithm leverages the spanning-interval data structure for compactly representing and manipulating entire sets of time intervals without enumerating them. Our experiments on interpreting basketball videos show that PEL inference is able to jointly detect events and identify their time intervals, based on noisy input from primitive-event detectors.
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基于间隔的事件识别的概率事件逻辑
本文是关于检测和分割发生在具有运动模糊、遮挡、动态背景和缺失观察值的具有挑战性的视频中的相关事件。我们认为,关于事件的时间间隔及其时间约束的整体推理对于克服低级视频表示所固有的噪声至关重要。为此目的,我们的第一个贡献是概率事件逻辑(PEL)的表述,用于表示事件之间的时间约束。PEL知识库由来自时间事件逻辑的置信度加权公式组成,并指定所有事件发生时间间隔上的联合分布。我们的第二个贡献是用于PEL的MAP推理算法,该算法解决了在典型视频中对大量时间间隔及其约束进行推理的可伸缩性问题。具体来说,我们的算法利用扩展间隔数据结构来紧凑地表示和操作整个时间间隔集,而不枚举它们。我们对篮球视频的解释实验表明,基于原始事件检测器的噪声输入,PEL推理能够联合检测事件并识别其时间间隔。
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