用于表示和分类人类行为的自组织活动描述图

J. A. López, M. Saval-Calvo, Andrés Fuster Guilló, J. G. Rodríguez, Sergio Orts
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引用次数: 7

摘要

从视频序列中自动理解人的活动是计算机视觉和模式识别领域近年来取得重大进展的一个开放性研究课题。本文提出了自组织活动描述图(SOADM)。它是一种基于自组织范式的新型神经网络,用于对视频序列进行高层次的语义理解分类。神经网络能够处理场景中人类轨迹和与之相关的全局行为之间的巨大差距。具体地说,使用人们轨迹的简单表示作为输入,SOADM能够表示和分类人类行为。此外,该地图能够保留有关场景的拓扑信息。实验使用了CAVIAR数据库的购物中心数据集,并考虑了个人的全局行为。结果表明,该方法具有较高的准确率,优于以往的方法。
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Self-Organizing Activity Description Map to represent and classify human behaviour
The automated understanding of people activities from video sequences is an open research topic in which the computer vision and pattern recognition areas have made big efforts in recent years. This paper proposes the Self Organizing Activity Description Map (SOADM). It is a novel neural network based on the self-organizing paradigm to classify high level of semantic understanding from video sequences. The neural network is able to deal with the big gap between human trajectories in a scene and the global behaviour associated to them. Specifically, using simple representations of people trajectories as input, the SOADM is able to both represent and classify human behaviours. Additionally, the map is able to preserve the topological information about the scene. Experiments have been carried out using the Shopping Centre dataset of the CAVIAR database taken into account the global behaviour of an individual. Results confirm the high accuracy of the proposal outperforming previous methods.
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