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Mining discriminative descriptors for goal-based activity detection

机译:挖掘判别描述符以进行基于目标的活动检测

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Human activity detection from video that is recorded continuously over time has been gaining increasing attention due to its use in applications like security monitoring, smart homes and assisted living setups. The analysis of continuous videos for the detection of specific activities, called Activities of Interest (Aol) in this work, is particularly challenging, as the start and end times of the Aol are unknown, while the Aol themselves feature large anthropometric variations, making their recognition more difficult. Continuously recorded videos also contain periods of inactivity, or activities that are not in the set of Aol, further complicating the problem of detection.This work attempts to overcome these challenges by introducing the concepts of (1) discriminative descriptors, (2) a goal for the Aol, represented by the most discriminative descriptors, (3) a novel, goal-based framework for activity detection and recognition in video. We represent Aol goals by descriptors found to be the most discriminative, as defined by a function of their correlation distance from the majority of the data, rather than by semantics or parametric modeling. This ensures flexibility, as activities in video feature many variations which cannot always be adequately represented by model-based approaches. Temporal detection of Aol is based on the distance of the test data from the Aol goals, which is shown to provide accurate results. Activity recognition takes place by applying SVM classification on the detected Aol, and the results are compared with the state-of-the-art on publicly available real world and benchmark research datasets.
机译:由于其在安全监控,智能家居和辅助生活设施等应用中的应用,从随时间连续记录的视频中检测人类活动一直受到越来越多的关注。连续视频的分析以检测特定活动(在这项工作中称为兴趣活动(Aol))特别具有挑战性,因为Aol的开始和结束时间未知,而Aol本身具有较大的人体测量学差异,因此识别比较困难。连续录制的视频还包含不活动的时间段或不在Aol范围内的活动,这进一步使检测问题变得更加复杂。这项工作试图通过引入(1)区分描述符,(2)目标的概念来克服这些挑战。对于Aol,以最具区别性的描述词为代表,(3)一种新颖,基于目标的视频活动检测和识别框架。我们通过被认为是最有区别的描述符来表示Aol目标,而描述符是根据它们与大多数数据的相关距离来定义的,而不是通过语义或参数化建模来定义。这确保了灵活性,因为视频中的活动具有许多变化,而这些变化总是不能通过基于模型的方法来充分表示。 Aol的时间检测基于测试数据与Aol目标之间的距离,该距离可提供准确的结果。通过将SVM分类应用于检测到的Aol进行活动识别,并将结果与​​可公开获得的真实世界和基准研究数据集上的最新技术进行比较。

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