ARGMode -活动识别使用图形模型

Raffay Hamid, Yan Huang, Irfan Essa
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引用次数: 61

摘要

本文提出了一种利用概率跟踪和图形模型相结合的方法来跟踪和识别复杂的多智能体活动的新框架。我们采用基于统计特征的粒子滤波来鲁棒跟踪杂乱环境中的多个目标。利用颜色和形状特征来区分和跟踪不同的物体,从而可靠地提取低级视觉信息,用于复杂活动的识别。然后使用这些提取的时空特征来构建用于表征这些活动的时间图形模型。通过不同场景中的示例,我们展示了框架的通用性和健壮性。
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ARGMode - Activity Recognition using Graphical Models
This paper presents a new framework for tracking and recognizing complex multi-agent activities using probabilistic tracking coupled with graphical models for recognition. We employ statistical feature based particle filter to robustly track multiple objects in cluttered environments. Both color and shape characteristics are used to differentiate and track different objects so that low level visual information can be reliably extracted for recognition of complex activities. Such extracted spatio-temporal features are then used to build temporal graphical models for characterization of these activities. We demonstrate through examples in different scenarios, the generalizability and robustness of our framework.
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