Results 271 to 280 of about 324,518 (313)

Hidden Markov models with spectral features for 2D shape recognition

open access: yesIEEE Transactions on Pattern Analysis and Machine Intelligence, 2001
We present a technique using Markov models with spectral features for recognizing 2D shapes. We analyze the properties of Fourier spectral features derived from closed contours of 2D shapes and use these features for 2D pattern recognition.
Jinhai Cai
exaly   +2 more sources

SPEECH SPECTRAL SEGMENTATION FOR SPECTRAL ESTIMATION AND FORMANT MODELLING

Speech and Hearing, 2005
The evaluation of accurate speech spectral estimates is of importance in many areas such as formant extraction, speaker/speech recognition etc. This work describes an approach based on Dynamic Progamming for the optimal segmentation of speech spectra into Selective Linear Predictive (LP) segments to minimise the discrepancy between real and model ...
Harprit S. Chhatwal   +1 more
openaire   +1 more source

Generalised Linear Spectral Models

SSRN Electronic Journal, 2013
AbstractThis chapter considers a class of parametric spectrum estimators based on a generalized linear model for exponential random variables with power link. The power transformation of the spectrum of a stationary process can be expanded in a Fourier series, with the coefficients representing generalized autocovariances.
Proietti, Tommaso, LUATI, ALESSANDRA
openaire   +2 more sources

Spectral jitter modeling and estimation

Biomedical Signal Processing and Control, 2009
This paper suggests a new method for short-time jitter estimation based on a mathematical model that describes the coupling of two periodical phenomena. Specifically, jitter is modeled as the movement of one of the two periodic phenomena with respect to the other. The proposed method measures this movement indirectly by taking into account the spectral
Miltiadis Vasilakis, Yannis Stylianou
openaire   +1 more source

The Spectral Method for General Mixture Models

SIAM Journal on Computing, 2005
We present an algorithm for learning a mixture of distributions based on spectral projection. We prove a general property of spectral projection for arbitrary mixtures and show that the resulting algorithm is efficient when the components of the mixture are logconcave distributions in $\Re^{n}$ whose means are separated.
Ravindran Kannan   +2 more
openaire   +1 more source

Spectral Impulse Noise Model for Spectral Image Processing

2015
The performance of an image processing algorithm can be assessed through its resulting images. However, in order to do so, both ground truth image and noisy target image with known properties are typically required. In the context of hyperspectral image processing, another constraint is introduced, i.e.
Hilda Deborah   +2 more
openaire   +2 more sources

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