Efficient Hybrid Error Concealment Algorithm Based on Adaptive Estimation Scheme

碩士 === 國立臺灣科技大學 === 自動化及控制研究所 === 94 === Video transmission plays an important role in multimedia communication. Due to transmission error, robust video transmission has become increasingly important in providing better quality of services. Based on our proposed novel adaptive estimation scheme, thi...

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Main Authors: Tzu-huang Huang, 黃梓晃
Other Authors: Kuo-Liang Chung
Format: Others
Language:en_US
Published: 2006
Online Access:http://ndltd.ncl.edu.tw/handle/8qn5az
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spelling ndltd-TW-094NTUS51460022018-06-25T06:05:11Z http://ndltd.ncl.edu.tw/handle/8qn5az Efficient Hybrid Error Concealment Algorithm Based on Adaptive Estimation Scheme 植基於可調式估計架構的混合式錯誤回復演算法 Tzu-huang Huang 黃梓晃 碩士 國立臺灣科技大學 自動化及控制研究所 94 Video transmission plays an important role in multimedia communication. Due to transmission error, robust video transmission has become increasingly important in providing better quality of services. Based on our proposed novel adaptive estimation scheme, this thesis presents an efficient hybrid error concealment algorithm for robust video transmission. Using the information of neighboring macroblocks (MBs) of the corrupted MBs, the corrupted MBs are classified into three types. According to the type of the corrupted MB, our proposed adaptive estimation scheme could adopt the B�膾ier surface estimation, the first-order plane estimation, or the centroid of major cluster estimation to conceal the corrupted MB efficiently. Based on six testing video sequences, experimental results demonstrate that our proposed hybrid error concealment algorithm can improve the video quality and the execution-time performance over different lost rates. Kuo-Liang Chung 鍾國亮 2006 學位論文 ; thesis 24 en_US
collection NDLTD
language en_US
format Others
sources NDLTD
description 碩士 === 國立臺灣科技大學 === 自動化及控制研究所 === 94 === Video transmission plays an important role in multimedia communication. Due to transmission error, robust video transmission has become increasingly important in providing better quality of services. Based on our proposed novel adaptive estimation scheme, this thesis presents an efficient hybrid error concealment algorithm for robust video transmission. Using the information of neighboring macroblocks (MBs) of the corrupted MBs, the corrupted MBs are classified into three types. According to the type of the corrupted MB, our proposed adaptive estimation scheme could adopt the B�膾ier surface estimation, the first-order plane estimation, or the centroid of major cluster estimation to conceal the corrupted MB efficiently. Based on six testing video sequences, experimental results demonstrate that our proposed hybrid error concealment algorithm can improve the video quality and the execution-time performance over different lost rates.
author2 Kuo-Liang Chung
author_facet Kuo-Liang Chung
Tzu-huang Huang
黃梓晃
author Tzu-huang Huang
黃梓晃
spellingShingle Tzu-huang Huang
黃梓晃
Efficient Hybrid Error Concealment Algorithm Based on Adaptive Estimation Scheme
author_sort Tzu-huang Huang
title Efficient Hybrid Error Concealment Algorithm Based on Adaptive Estimation Scheme
title_short Efficient Hybrid Error Concealment Algorithm Based on Adaptive Estimation Scheme
title_full Efficient Hybrid Error Concealment Algorithm Based on Adaptive Estimation Scheme
title_fullStr Efficient Hybrid Error Concealment Algorithm Based on Adaptive Estimation Scheme
title_full_unstemmed Efficient Hybrid Error Concealment Algorithm Based on Adaptive Estimation Scheme
title_sort efficient hybrid error concealment algorithm based on adaptive estimation scheme
publishDate 2006
url http://ndltd.ncl.edu.tw/handle/8qn5az
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