Developing a Estimator for Noncausal Dynamic Equation and Its Performance Comparison with the Kalman Filter

碩士 === 國立中山大學 === 通訊工程研究所 === 91 === The causal system is more practical then the noncausal system in the world. Causality implies only the past input can effect the future output. As a consequence, noncausal system is seldom investigation. The purpose of this thesis is to study the signal recury fo...

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Main Authors: Yang-En Cheng, 鄭仰恩
Other Authors: Ben-Shung Chow
Format: Others
Language:zh-TW
Published: 2003
Online Access:http://ndltd.ncl.edu.tw/handle/91220969024341340153
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spelling ndltd-TW-091NSYS56500202016-06-22T04:20:48Z http://ndltd.ncl.edu.tw/handle/91220969024341340153 Developing a Estimator for Noncausal Dynamic Equation and Its Performance Comparison with the Kalman Filter 非因果性動態方程式下線性估測器之設計與卡門濾波器之比較 Yang-En Cheng 鄭仰恩 碩士 國立中山大學 通訊工程研究所 91 The causal system is more practical then the noncausal system in the world. Causality implies only the past input can effect the future output. As a consequence, noncausal system is seldom investigation. The purpose of this thesis is to study the signal recury for a noncausal system. The principle of signal estimation is based upon the Wiener-Hopf equation. Therefore, the correlation computation is very important. By transforming the noncausal dynamic equations to a causal equation, we achieve a partial recursive computation structure for correlation computation. However the current input is not independent of the past signal in the noncausal system. Hence, the Mason Rule is applied to solved this problem to make the above recursive structure complete. Furthermore, a recursive computation of Mason Rule for stage propagation is developed in this thesis to accelerating the processing speed. Our algorithm is applied to image restoration. We first segment the image to find the required generating input ponen for each correlated region. Secondly, we extend our 1-D algorithms to 2-D algorithm to restore the image. Our method is compared with the method developed base upon the Gaussian Markov model. The experiments results demonstrate the advantage of method in both visual quailty and numerical results. Ben-Shung Chow 周本生 2003 學位論文 ; thesis 59 zh-TW
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description 碩士 === 國立中山大學 === 通訊工程研究所 === 91 === The causal system is more practical then the noncausal system in the world. Causality implies only the past input can effect the future output. As a consequence, noncausal system is seldom investigation. The purpose of this thesis is to study the signal recury for a noncausal system. The principle of signal estimation is based upon the Wiener-Hopf equation. Therefore, the correlation computation is very important. By transforming the noncausal dynamic equations to a causal equation, we achieve a partial recursive computation structure for correlation computation. However the current input is not independent of the past signal in the noncausal system. Hence, the Mason Rule is applied to solved this problem to make the above recursive structure complete. Furthermore, a recursive computation of Mason Rule for stage propagation is developed in this thesis to accelerating the processing speed. Our algorithm is applied to image restoration. We first segment the image to find the required generating input ponen for each correlated region. Secondly, we extend our 1-D algorithms to 2-D algorithm to restore the image. Our method is compared with the method developed base upon the Gaussian Markov model. The experiments results demonstrate the advantage of method in both visual quailty and numerical results.
author2 Ben-Shung Chow
author_facet Ben-Shung Chow
Yang-En Cheng
鄭仰恩
author Yang-En Cheng
鄭仰恩
spellingShingle Yang-En Cheng
鄭仰恩
Developing a Estimator for Noncausal Dynamic Equation and Its Performance Comparison with the Kalman Filter
author_sort Yang-En Cheng
title Developing a Estimator for Noncausal Dynamic Equation and Its Performance Comparison with the Kalman Filter
title_short Developing a Estimator for Noncausal Dynamic Equation and Its Performance Comparison with the Kalman Filter
title_full Developing a Estimator for Noncausal Dynamic Equation and Its Performance Comparison with the Kalman Filter
title_fullStr Developing a Estimator for Noncausal Dynamic Equation and Its Performance Comparison with the Kalman Filter
title_full_unstemmed Developing a Estimator for Noncausal Dynamic Equation and Its Performance Comparison with the Kalman Filter
title_sort developing a estimator for noncausal dynamic equation and its performance comparison with the kalman filter
publishDate 2003
url http://ndltd.ncl.edu.tw/handle/91220969024341340153
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