Bilayer Segmentation of Live Video

A. Criminisi, G. Cross, A. Blake, V. Kolmogorov
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引用次数: 317

Abstract

This paper presents an algorithm capable of real-time separation of foreground from background in monocular video sequences. Automatic segmentation of layers from colour/contrast or from motion alone is known to be error-prone. Here motion, colour and contrast cues are probabilistically fused together with spatial and temporal priors to infer layers accurately and efficiently. Central to our algorithm is the fact that pixel velocities are not needed, thus removing the need for optical flow estimation, with its tendency to error and computational expense. Instead, an efficient motion vs nonmotion classifier is trained to operate directly and jointly on intensity-change and contrast. Its output is then fused with colour information. The prior on segmentation is represented by a second order, temporal, Hidden Markov Model, together with a spatial MRF favouring coherence except where contrast is high. Finally, accurate layer segmentation and explicit occlusion detection are efficiently achieved by binary graph cut. The segmentation accuracy of the proposed algorithm is quantitatively evaluated with respect to existing groundtruth data and found to be comparable to the accuracy of a state of the art stereo segmentation algorithm. Foreground/ background segmentation is demonstrated in the application of live background substitution and shown to generate convincingly good quality composite video.
实时视频的双层分割
提出了一种在单目视频序列中实现前景与背景实时分离的算法。从颜色/对比度或单独从运动中自动分割图层是容易出错的。在这里,运动、颜色和对比线索可能与空间和时间先验融合在一起,以准确有效地推断层。我们算法的核心是不需要像素速度,从而消除了光流估计的需要,其倾向于误差和计算费用。相反,训练一个有效的运动与非运动分类器来直接和联合地操作强度变化和对比度。然后它的输出与颜色信息融合在一起。先验分割由一个二阶的、时间的、隐马尔可夫模型表示,除了对比度高的地方,还有一个空间MRF。最后,通过二值图切割,有效地实现了准确的层分割和显式的遮挡检测。所提出的算法的分割精度相对于现有的地面真实数据进行定量评估,并发现可与最先进的立体分割算法的精度相媲美。演示了前景/背景分割在实时背景替换中的应用,并显示出令人信服的高质量合成视频。
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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