Video Objects Segmentation by Robust Background Modeling

Andrea Colombari, Andrea Fusiello, Vittorio Murino
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引用次数: 16

Abstract

This paper deals with the problem of segmenting a video shot into a background (still) mosaic and one or more foreground moving objects. The method is based on ego-motion compensation and background estimation. In order to be able to cope with sequences where occluding objects persist in the same position for a considerable portion of time, the papers concentrates on robust background estimation method. First the sequence is subdivided in patches that are clustered along the time-line in order to narrow down the number of background candidates. Then the background is grown incrementally by selecting at each step the best continuation of the current background, according to the principles of visual grouping. The method rests on sound principles in all its stages, and only few, intelligible parameters are needed. Experiments with real sequences illustrate the approach.
基于鲁棒背景建模的视频对象分割
本文研究了将视频镜头分割为背景(静止)马赛克和一个或多个前景运动物体的问题。该方法基于自运动补偿和背景估计。为了能够处理遮挡物体在相当长时间内保持在同一位置的序列,本文重点研究了鲁棒背景估计方法。首先,序列被细分为沿着时间线聚集的小块,以缩小背景候选的数量。然后,根据视觉分组的原则,每一步选择当前背景的最佳延续,逐步增长背景。该方法在其所有阶段都基于可靠的原则,只需要很少的、可理解的参数。真实序列的实验验证了该方法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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