Multimodal 3-D tracking and event detection via the particle filter

D. Zotkin, R. Duraiswami, L. Davis
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引用次数: 48

Abstract

Determining the occurrence of an event is fundamental to developing systems that can observe and react to them. Often, this determination is based on collecting video and/or audio data and determining the state or location of a tracked object. We use Bayesian inference and the particle filter for tracking moving objects, using both video data obtained from multiple cameras and audio data obtained using arrays of microphones. The algorithms developed are applied to determining events arising in two fields of application. In the first, the behavior of a flying echo locating bat as it approaches a moving prey is studied, and the events of search, approach and capture are detected. In a second application we describe detection of turn-taking in a conversation between possibly moving participants recorded using a smart video conferencing setup.
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基于粒子滤波的多模态三维跟踪和事件检测
确定事件的发生是开发能够观察事件并对其作出反应的系统的基础。通常,这种判断是基于收集视频和/或音频数据,并确定被跟踪对象的状态或位置。我们使用贝叶斯推理和粒子滤波来跟踪运动物体,同时使用从多个摄像机获得的视频数据和使用麦克风阵列获得的音频数据。所开发的算法用于确定两个应用领域中发生的事件。首先,研究了飞行回声定位蝙蝠在接近移动猎物时的行为,并检测了搜索、接近和捕获事件。在第二个应用中,我们描述了在使用智能视频会议设置记录的可能移动的参与者之间的对话中轮换的检测。
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