动态场景的背景建模和减法

Antoine Monnet, Anurag Mittal, N. Paragios, Visvanathan Ramesh
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引用次数: 481

摘要

背景建模和减法是运动分析的核心组成部分。该模块背后的核心思想是创建静态场景的概率表示,将其与当前输入进行比较以执行减法。当要建模的场景是摄动有限的静态结构时,这种方法是有效的。在本文中,我们解决了动态场景建模的问题,其中静态背景的假设是无效的。摇曳的树木、海滩、自动扶梯、下雨或下雪的自然景观都是例子。受Doretto等人(2003)提出的工作的启发,我们提出了一个在线自回归模型来捕获和预测这些场景的行为。为了检测事件,我们引入了一种新的度量,该度量基于预测和实际帧之间的状态驱动比较。令人鼓舞的结果证明了所提出框架的潜力。
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Background modeling and subtraction of dynamic scenes
Background modeling and subtraction is a core component in motion analysis. The central idea behind such module is to create a probabilistic representation of the static scene that is compared with the current input to perform subtraction. Such approach is efficient when the scene to be modeled refers to a static structure with limited perturbation. In this paper, we address the problem of modeling dynamic scenes where the assumption of a static background is not valid. Waving trees, beaches, escalators, natural scenes with rain or snow are examples. Inspired by the work proposed by Doretto et al. (2003), we propose an on-line auto-regressive model to capture and predict the behavior of such scenes. Towards detection of events we introduce a new metric that is based on a state-driven comparison between the prediction and the actual frame. Promising results demonstrate the potentials of the proposed framework.
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