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文件名称:Fast Estimation of Gaussian Mixture Models for Image Segmentation
文件大小:2.03MB
文件格式:PDF
更新时间:2018-07-30 10:12:27
image segmentation
利用高斯混合模型实现图像分割The Expectation-Maximization algorithmhas been
classically used to find the maximum likelihood estimates of
parameters in probabilistic models with unobserved data,
for instance, mixture models. A key issue in such problems
is the choice of the model complexity. The higher the number
of components in the mixture, the higher will be the
data likelihood, but also the higher will be the computational
burden and data overfitting. In this work we propose
a clustering method based on the expectation maximization
algorithm that adapts on-line the number of components
of a finite Gaussian mixture model from multivariate data.
Or method estimates the number of components and their
means and covariances sequentially, without requiring any
careful initialization.
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