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On the convergence and applications of mean shift type algorithms

机译:均值漂移型算法的收敛性及应用

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Mean shift (MS) and subspace constrained mean shift (SCMS) algorithms are iterative methods to find an underlying manifold associated with an intrinsically low dimensional data set embedded in a high dimensional space. Although the MS and SCMS algorithms have been used in many applications related to information and signal processing, a rigorous study of their convergence properties is still missing. This paper aims to fill some of the gaps between theory and practice. We present theoretical results about convergence of the MS and SCMS algorithms. As well, we discuss potential applications of the SCMS algorithm as a preprocessing step for noisy source vector quantization and nonlinear dimensionality reduction with noisy observations.
机译:均值平移(MS)和子空间约束均值平移(SCMS)算法是一种迭代方法,用于查找与嵌入高维空间中的固有低维数据集相关的基础流形。尽管MS和SCMS算法已在与信息和信号处理相关的许多应用中使用,但仍缺少对其收敛特性的严格研究。本文旨在填补理论与实践之间的空白。我们提出有关MS和SCMS算法收敛的理论结果。同样,我们讨论了SCMS算法作为噪声源矢量量化和带有噪声观测值的非线性降维的预处理步骤的潜在应用。

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