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Monocular Video Foreground/Background Segmentation by Tracking Spatial-Color Gaussian Mixture Models

机译:通过跟踪空间高斯混合模型的单目视频前景/背景分割

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This paper presents a new approach to segmenting monocular videos captured by static or hand-held cameras filming large moving non-rigid foreground objects. The foreground and background objects are modeled using spatial-color Gaussian mixture models (SCGMM), and segmented using the graph cut algorithm, which minimizes a Markov random field energy function containing the SCGMM models. In view of the existence of a modeling gap between the available SCGMMs and segmentation task of a new frame, one major contribution of our paper is the introduction of a novel foreground/background SCGMM joint tracking algorithm to bridge this space, which greatly improves the segmentation performance in case of complex or rapid motion. Specifically, we propose to combine the two SCGMMs into a generative model of the whole image, and maximize the joint data likelihood using a constrained Expectation-Maximization (EM) algorithm. The effectiveness of the proposed algorithm is demonstrated on a variety of sequences.
机译:本文提出了一种新方法,可以通过拍摄大型移动非刚性前景对象的静态或手持式相机捕获的单眼视频。前景和背景对象是使用空间高斯混合模型(SCGMM)进行建模的,并使用图形切割算法进行分段,这最小化包含SCGMM模型的马尔可夫随机场能量函数。鉴于新帧的可用SCGMMS与分割任务之间的建模差距,我们纸张的一项主要贡献是引入新颖的前景/背景SCGMM联合跟踪算法来弥合这个空间,这大大改善了分割在复杂或快速运动的情况下性能。具体地,我们建议将两个SCGMM组合成整个图像的生成模型,并使用受约束期望最大化(EM)算法来最大化联合数据似然性。在各种序列上证明了所提出的算法的有效性。

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