Stationary objects in multiple object tracking

S. Guler, Jason A. Silverstein, Ian A. Pushee
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引用次数: 59

Abstract

This paper presents an approach to detect stationary foreground objects in naturally busy surveillance video scenes with several moving objects. Our approach is inspired by human's visual cognition processes and builds upon a multi-tier video tracking paradigm with main layers being the spatially based "peripheral tracking" loosely corresponding to the peripheral vision and the object based "vision tunnels " for focused attention and analysis of tracked objects. Humans allocate their attention to different aspects of objects and scenes based on a defined task. In our model, a specific processing layer corresponding to allocation of attention is used for detection of objects that become stationary. The static object layer, a natural extension of this framework, detects and maintains the stationary foreground objects by using the moving object and scene information from Peripheral Tracker and the Scene Description layers. Simple event detection modules then use the enduring stationary objects to determine events such as Parked Vehicles or Abandoned Bags.
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多目标跟踪中的静止目标
本文提出了一种在自然繁忙的监控视频场景中检测静止前景目标的方法。我们的方法受到人类视觉认知过程的启发,建立在多层视频跟踪范式的基础上,主要层是基于空间的“周边跟踪”,松散地对应于周边视觉和基于对象的“视觉隧道”,用于集中注意力和分析跟踪对象。人类根据既定任务将注意力分配到物体和场景的不同方面。在我们的模型中,使用一个与注意力分配相对应的特定处理层来检测静止的物体。静态对象层是该框架的自然扩展,通过使用来自外围跟踪器层和场景描述层的移动对象和场景信息来检测和维护静止的前景对象。简单的事件检测模块然后使用持久的静止物体来确定事件,例如停放的车辆或丢弃的袋子。
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