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Plenary talk: Self validated labeling of Markov random fields in computer vision

机译:全体会议:计算机视觉中马尔可夫随机字段的自我验证标记

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In computer vision a large number of problems is about finding boundaries in a scene which are usually ill-defined due to lack of resolution, noise and occlusions, etc. Traditional approaches such as regularization and the well-known Laplacian of Gaussian (LoG) type filters throughout the 70s to early 90s have not led to satisfactory results. We have found, however, combining with unsupervised learning, more specifically, clustering, with the theory of Markov Random Field (MRF) we are able to achieve marked improvements over some of the major techniques recently reported in the literature. In this talk I will address in particular the problem of self-validated labeling of Markov random fields (MRFs), namely to optimize an MRF with unknown number of labels.1 I will present graduated graph cuts (GGC), a new technique that extends the binary s-t graph cut for self-validated labeling. Specifically, we use the split-and merge strategy to decompose the complex problem to a series of tractable subproblems. In terms of Gibbs energy minimization, a suboptimal labeling is gradually obtained based upon a set of cluster-level operations. By using different optimization structures, we propose three practical algorithms: tree-structured graph cuts (TSGC), net-structured graph cuts (NSGC) and hierarchical graph cuts (HGC). In contrast to previous methods, the proposed algorithms can automatically determine the number of labels, properly balance the labeling accuracy, spatial coherence and the labeling cost (i.e., the number of labels), and are computationally efficient, independent to initialization and able to converge to good local minima. We apply the proposed algorithms to natural image segmentation. Experimental results show that our algorithms produce generally feasible segmentations for Benchmark datasets, and outperform alternative methods in terms of robustness to noise, speed and preservation of soft boundaries.
机译:在计算机愿景中,大量问题是在场景中找到通常由于缺乏分辨率,噪声和闭塞等而被界定的场景中的边界等。如正常化和高斯(日志)类型的众所周知的Laplacian等传统方法整个70年代恢复90年代的过滤器没有导致令人满意的结果。然而,我们发现了与无人监督的学习相结合,更具体地说,聚类,随着马尔可夫随机场(MRF)的理论,我们能够实现在文献中最近报告的一些主要技术的显着改善。在这次谈话中,我将特别地解决马尔可夫随机字段(MRFS)的自验证标签问题,即优化具有未知数量标签的MRF.1我将呈现渐变的图表(GGC),这是一种延伸的新技术二进制St图表切割自验证标签。具体来说,我们使用拆分和合并策略将复杂问题分解为一系列贸易的子问题。就GIBBS能量最小化而言,基于一组簇级操作逐渐获得次优标记。通过使用不同的优化结构,我们提出了三种实用算法:树结构图剪切(TSGC),Net结构图Cuts(NSGC)和分层图纸(HGC)。与以前的方法相比,所提出的算法可以自动确定标签的数量,正确平衡标签精度,空间相干性和标记成本(即标签数),并且是计算效率,独立于初始化和能够汇聚到良好的地方最小值。我们将所提出的算法应用于自然图像分割。实验结果表明,我们的算法为基准数据集产生了一般可行的分割,并且在噪声,速度和软边的稳健性方面优于替代方法。

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