Hypersphere Fitting From Noisy Data Using an EM Algorithm

IEEE Signal Processing Letters(2021)

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摘要
This letter studies a new expectation maximization (EM) algorithm to solve the problem of circle, sphere and more generally hypersphere fitting. This algorithm relies on the introduction of random latent vectors having a priori independent von Mises-Fisher distributions defined on the hypersphere. This statistical model leads to a complete data likelihood whose expected value, conditioned on the observed data, has a Von Mises-Fisher distribution. As a result, the inference problem can be solved with a simple EM algorithm. The performance of the resulting hypersphere fitting algorithm is evaluated for circle and sphere fitting.
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关键词
Hypersphere Fitting,Maximum Likelihood Estimation,Expectation-Maximization Algorithm,von Mises-Fisher distribution
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