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Multiobject behavior recognition by event driven selective attention method

机译:基于事件驱动的选择性注意方法的多目标行为识别

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摘要

This paper presents a multiobject behaviour recognition approach based on assumption generation and verification, i.e., feasible assumptions about the present behaviors consistent with the input image and behavior models are dynamically generated and verified by finding their supporting evidence in input images. This can be realized by an architecture called the selective attention model, which consists of a state-dependent event detector and an event sequence analyzer. The former detects image variation (event) in a limited image region (focusing region), which is not affected by occlusions and outliers. The latter analyzes sequences of detected events and activates all feasible states representing assumptions about multiobject behaviors. We further extend the system by introducing colored-token propagation to discriminate different objects in state space, and integration of multiviewpoint image sequences to disambiguate the single-view recognition results. Extensive experiments of human behavior recognition in real world environments demonstrate the soundness and robustness of our architecture.
机译:本文提出了一种基于假设生成和验证的多对象行为识别方法,即关于与输入图像一致的当前行为的可行假设,并通过在输入图像中找到它们的支持证据来动态生成和验证行为模型。这可以通过称为选择性注意模型的体系结构来实现,该体系结构包括一个与状态有关的事件检测器和一个事件序列分析器。前者在不受遮挡和离群值影响的有限图像区域(聚焦区域)中检测图像变化(事件)。后者分析检测到的事件的序列,并激活所有可行的状态,这些状态表示有关多对象行为的假设。我们通过引入彩色令牌传播来区分状态空间中的不同对象,以及集成多视点图像序列以消除单视点识别结果的歧义,进一步扩展了系统。在现实世界环境中进行的大量人类行为识别实验证明了我们架构的稳健性。

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