高斯均值移位图像分割的加速策略

M. A. Carreira-Perpiñán
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引用次数: 88

摘要

高斯均值移位(GMS)是一种聚类算法,已被证明可以产生良好的图像分割(其中每个像素被表示为具有空间和距离分量的特征向量)。GMS的工作原理是为数据定义高斯核密度估计,并在定点迭代方案下将收敛到同一模式的点聚在一起。然而,该算法速度较慢,因为其复杂度为O(kN2),其中N为像素数,k为每个像素的平均迭代次数。基于图像的空间结构和期望最大化(EM)算法的特点,研究了四种GMS加速策略:空间离散化、空间邻域、稀疏EM和EM- newton算法。我们表明,空间离散化策略可以在实现基本相同的分割的同时,将GMS的速度提高一到两个数量级;而其他策略获得的加速不到一个数量级。
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Acceleration Strategies for Gaussian Mean-Shift Image Segmentation
Gaussian mean-shift (GMS) is a clustering algorithm that has been shown to produce good image segmentations (where each pixel is represented as a feature vector with spatial and range components). GMS operates by defining a Gaussian kernel density estimate for the data and clustering together points that converge to the same mode under a fixed-point iterative scheme. However, the algorithm is slow, since its complexity is O(kN2), where N is the number of pixels and k the average number of iterations per pixel. We study four acceleration strategies for GMS based on the spatial structure of images and on the fact that GMS is an expectation-maximisation (EM) algorithm: spatial discretisation, spatial neighbourhood, sparse EM and EM-Newton algorithm. We show that the spatial discretisation strategy can accelerate GMS by one to two orders of magnitude while achieving essentially the same segmentation; and that the other strategies attain speedups of less than an order of magnitude.
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