基于范例的背景模型初始化

Andrea Colombari, M. Cristani, Vittorio Murino, Andrea Fusiello
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引用次数: 21

摘要

大多数自动视频监控应用都是基于背景(BG)减法技术,目的是在静态场景中识别运动物体。这些策略很大程度上依赖于BG模型,而BG模型必须进行初始化和更新。良好的初始化对于后续处理至关重要。在本文中,我们提出了一种新的BG初始化和恢复方法,该方法融合了来自视频绘画和生成建模子领域的有趣想法。该方法以一个视频序列作为输入,其中几个物体在静止的BG前面移动。然后,迭代建立BG的统计表示,自动丢弃运动目标。该方法基于以下假设:(i)仅使用每像素推理就可以高度确定地识别BG的一部分,称为确定BG; (ii)可以利用确定BG的示例生成剩余的场景BG。所提出的算法能够以一种有原则和有效的方式利用这些假设。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Exemplar-based background model initialization
Most of the automated video-surveillance applications are based on background (BG) subtraction techniques, that aim at distinguishing moving objects in a static scene. These strategies strongly depend on the BG model, that has to be initialized and updated. A good initialization is crucial for the successive processing. In this paper, we propose a novel method for BG initialization and recovery, that merges interesting ideas coming from the video inpainting and the generative modelling subfields. The method takes as input a video sequence, in which several objects move in front of a stationary BG. Then, a statistical representation of the BG is iteratively built, discarding automatically the moving objects. The method is based on the following hypotheses: (i) a portion of the BG, called sure BG, can be identified with high certainty by using only per-pixel reasoning and (ii) the remaining scene BG can be generated utilizing exemplars of the sure BG. The proposed algorithm is able to exploit these hypotheses in a principled and effective way.
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