Search engine for discovering works of Art, research articles, and books related to Art and Culture
ShareThis
Javascript must be enabled to continue!

Improved Approach for the Maximum Entropy Deconvolution Problem

View through CrossRef
The probability density function (pdf) valid for the Gaussian case is often applied for describing the convolutional noise pdf in the blind adaptive deconvolution problem, although it is known that it can be applied only at the latter stages of the deconvolution process, where the convolutional noise pdf tends to be approximately Gaussian. Recently, the deconvolutional noise pdf was approximated with the Edgeworth Expansion and with the Maximum Entropy density function for the 16 Quadrature Amplitude Modulation (QAM) input but no equalization performance improvement was seen for the hard channel case with the equalization algorithm based on the Maximum Entropy density function approach for the convolutional noise pdf compared with the original Maximum Entropy algorithm, while for the Edgeworth Expansion approximation technique, additional predefined parameters were needed in the algorithm. In this paper, the Generalized Gaussian density (GGD) function and the Edgeworth Expansion are applied for approximating the convolutional noise pdf for the 16 QAM input case, with no need for additional predefined parameters in the obtained equalization method. Simulation results indicate that improved equalization performance is obtained from the convergence time point of view of approximately 15,000 symbols for the hard channel case with our new proposed equalization method based on the new model for the convolutional noise pdf compared to the original Maximum Entropy algorithm. By convergence time, we mean the number of symbols required to reach a residual inter-symbol-interference (ISI) for which reliable decisions can be made on the equalized output sequence.
Title: Improved Approach for the Maximum Entropy Deconvolution Problem
Description:
The probability density function (pdf) valid for the Gaussian case is often applied for describing the convolutional noise pdf in the blind adaptive deconvolution problem, although it is known that it can be applied only at the latter stages of the deconvolution process, where the convolutional noise pdf tends to be approximately Gaussian.
Recently, the deconvolutional noise pdf was approximated with the Edgeworth Expansion and with the Maximum Entropy density function for the 16 Quadrature Amplitude Modulation (QAM) input but no equalization performance improvement was seen for the hard channel case with the equalization algorithm based on the Maximum Entropy density function approach for the convolutional noise pdf compared with the original Maximum Entropy algorithm, while for the Edgeworth Expansion approximation technique, additional predefined parameters were needed in the algorithm.
In this paper, the Generalized Gaussian density (GGD) function and the Edgeworth Expansion are applied for approximating the convolutional noise pdf for the 16 QAM input case, with no need for additional predefined parameters in the obtained equalization method.
Simulation results indicate that improved equalization performance is obtained from the convergence time point of view of approximately 15,000 symbols for the hard channel case with our new proposed equalization method based on the new model for the convolutional noise pdf compared to the original Maximum Entropy algorithm.
By convergence time, we mean the number of symbols required to reach a residual inter-symbol-interference (ISI) for which reliable decisions can be made on the equalized output sequence.

Related Results

Sparsity‐enhanced wavelet deconvolution
Sparsity‐enhanced wavelet deconvolution
ABSTRACTWe propose a three‐step bandwidth enhancing wavelet deconvolution process, combining linear inverse filtering and non‐linear reflectivity construction based on a sparseness...
Wave Scattering Deconvolution
Wave Scattering Deconvolution
ABSTRACT The least-squares approach is commonly used for spiking and predictive deconvolution. An alternative approach is wave scattering deconvolution (WSD) prop...
Abstract 1554: Development of a deconvolution algorithm for tissue-based gene expression data
Abstract 1554: Development of a deconvolution algorithm for tissue-based gene expression data
Abstract Tissue data provide substantially more information than cell-line data, and offer new opportunities to study cancer biology and evolution in its actual micr...
Entropy and Wealth
Entropy and Wealth
While entropy was introduced in the second half of the 19th century in the international vocabulary as a scientific term, in the 20th century it became common in colloquial use. Po...
NLTD 2.0: A Nonlinear Framework for Robust and Customizable Color Deconvolution in Histopathology
NLTD 2.0: A Nonlinear Framework for Robust and Customizable Color Deconvolution in Histopathology
Abstract Advancements in computational approaches have enabled robust utilization of histological tissue data. A crucial step in the development of computational tools ...
Improving the depth resolution of STEM-ADF sectioning by 3D deconvolution
Improving the depth resolution of STEM-ADF sectioning by 3D deconvolution
Abstract Although the possibility of locating single atom in three dimensions using the scanning transmission electron microscope (STEM) has been discussed with the ...
New Lagrange Multipliers for the Blind Adaptive Deconvolution Problem Applicable for the Noisy Case
New Lagrange Multipliers for the Blind Adaptive Deconvolution Problem Applicable for the Noisy Case
Recently, a new blind adaptive deconvolution algorithm was proposed based on a new closed-form approximated expression for the conditional expectation (the expectation of the sourc...
Cross-Subject Emotion Recognition Using Fused Entropy Features of EEG
Cross-Subject Emotion Recognition Using Fused Entropy Features of EEG
Emotion recognition based on electroencephalography (EEG) has attracted high interest in fields such as health care, user experience evaluation, and human–computer interaction (HCI...

Back to Top