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Fast approximate energy minimization with label costs

机译:快速降低能耗,节省标签成本

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摘要

The α-expansion algorithm has had a significant impact in computer vision due to its generality, effectiveness, and speed. It is commonly used to minimize energies that involve unary, pairwise, and specialized higher-order terms. Our main algorithmic contribution is an extension of α-expansion that also optimizes "label costs" with well-characterized optimality bounds. Label costs penalize a solution based on the set of labels that appear in it, for example by simply penalizing the number of labels in the solution. Our energy has a natural interpretation as minimizing description length (MDL) and sheds light on classical algorithms like K-means and expectation- maximization (EM). Label costs are useful for multi-model fitting and we demonstrate several such applications: homography detection, motion segmentation, image segmentation, and compression. Our C++ and MATLAB code is publicly available http://vision.csd.uwo.ca/code/.
机译:由于其通用性,有效性和速度,α扩展算法对计算机视觉产生了重大影响。通常用于最小化涉及一元,成对和专门的高阶项的能量。我们在算法上的主要贡献是对α展开的扩展,该扩展还利用特征明确的最佳范围来优化“标签成本”。标签成本基于出现在其中的一组标签来惩罚解决方案,例如,只需简单地惩罚解决方案中的标签数量。我们的能量具有最小化描述长度(MDL)的自然诠释,并阐明了经典算法,例如K均值和期望最大化(EM)。标签成本对于多模型拟合非常有用,我们展示了几种此类应用:单应性检测,运动分割,图像分割和压缩。我们的C ++和MATLAB代码可从http://vision.csd.uwo.ca/code/公开获得。

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