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Statistical background subtraction for a mobile observer

机译:移动观察者的统计背景减法

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Statistical background modelling and subtraction has proved to be a popular and effective class of algorithms for segmenting independently moving foreground objects out from a static background, without requiring any a priori information of the properties of foreground objects. We present two contributions on this topic, aimed towards robotics where an active head is mounted on a mobile vehicle. In periods when the vehicle's wheels are not driven, camera translation is virtually zero, and background subtraction techniques are applicable. This is also highly relevant to surveillance and video conferencing. The first part presents an efficient probabilistic framework for when the camera pans and tilts. A unified approach is developed for handling various sources of error, including motion blur, subpixel camera motion, mixed pixels at object boundaries, and also uncertainty in background stabilisation caused by noise, unmodelled radial distortion and small translations of the camera. The second contribution regards a Bayesian approach to specifically incorporate uncertainty concerning whether the background has yet been uncovered by moving foreground objects. This is an important requirement during initialisation of a system. We cannot assume that a background model is available in advance since that would involve storing models for each possible position, in every room, of the robot's operating environment.. Instead the background mode must be generated online, very possibly in the presence of moving objects.
机译:已经证明统计背景建模和减法是一种流行且有效的类算法,用于从静态背景中分割独立移动的前景对象,而不需要前景对象属性的任何先验信息。我们为此主题提出了两项​​贡献,旨在朝着机器人学,主动头安装在移动车辆上。在未驱动车辆的车轮时,相机转换几乎为零,并且需要背景减法技术。这也与监视和视频会议非常相关。第一部分呈现了相机平底锅和倾斜的有效概率框架。开发了一种统一的方法,用于处理各种误差来源,包括运动模糊,子像素相机运动,对象边界的混合像素,以及由噪声,未介质的径向失真和相机的小型翻译引起的背景稳定中的不确定性。第二种贡献至关贝叶斯方法,以具体地纳入有关背景是否尚未揭示的前景对象的不确定性。这是系统初始化期间的重要要求。我们不能假设提前提供背景模型,因为它将涉及为机器人操作环境的每个房间涉及为每个房间的每个可能位置存储模型。相反,必须在线生成背景模式,可能在存在移动物体的情况下。

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