Open AccessJournal Article
A gentle tutorial of the em algorithm and its application to parameter estimation for Gaussian mixture and hidden Markov models
TL;DR: In this paper, the authors describe the EM algorithm for finding the parameters of a mixture of Gaussian densities and a hidden Markov model (HMM) for both discrete and Gaussian mixture observation models.
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Abstract: We describe the maximum-likelihood parameter estimation problem and how the ExpectationMaximization (EM) algorithm can be used for its solution. We first describe the abstract form of the EM algorithm as it is often given in the literature. We then develop the EM parameter estimation procedure for two applications: 1) finding the parameters of a mixture of Gaussian densities, and 2) finding the parameters of a hidden Markov model (HMM) (i.e., the Baum-Welch algorithm) for both discrete and Gaussian mixture observation models. We derive the update equations in fairly explicit detail but we do not prove any convergence properties. We try to emphasize intuition rather than mathematical rigor.
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Of Disasters and Dragon Kings: A Statistical Analysis of Nuclear Power Incidents & Accidents
TL;DR: In this article, the authors provide a risk theoretic analysis of a dataset that is 75 percent larger than the previous best dataset on nuclear incidents and accidents, comparing three measures of severity: INES (International Nuclear Event Scale), radiation released, and damage dollar losses.
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The Cramér-Rao Bounds and Sensor Selection for Nonlinear Systems with Uncertain Observations.
TL;DR: Two methods to derive the posterior Cramér–Rao bound and sensor selection for multi-sensor nonlinear systems with uncertain observations are investigated and the optimal solution of the sensor selection problem can be derived analytically.
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An Adaptive Gaussian Mixture Model for Non-rigid Image Registration
TL;DR: This paper presents a new model based on statistical and variational methods for non-rigid image registration as an improvement of the intensity-based model whose dissimilarity term is based on minimization of the so-called sum of squared difference.
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A novel multi-perspective imaging platform (M-PIP) for phenotyping soybean root crowns in the field increases throughput and separation ability of genotype root properties
TL;DR: The substantial heritabilities measured for many phenes suggest that they are potentially useful for breeding, and the Multi-Perspective Imaging Platform can contribute to breeding efforts that incorporate under-utilized root phenotypes to increase food security and sustainability.
Towards morphological sound description using segmental models
Julien Bloit,Nicolas Rasamimanana,Frédéric Bevilacqua +2 more
- 01 Sep 2009
TL;DR: This work presents an approach to model the temporal evolution of audio descriptors using Segmental Models, which allows to segment a signal as a sequence of primitives, constituted by a set of trajectories defined by the user.
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William H. Press,Saul A. Teukolsky,William T. Vetterling,Brian P. Flannery +3 more
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TL;DR: The Diskette v 2.06, 3.5''[1.44M] for IBM PC, PS/2 and compatibles [DOS] Reference Record created on 2004-09-07, modified on 2016-08-08.
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