Categorizing the Video Shots of the Baseball Game Program Using Hidden Markov Models
碩士 === 國立清華大學 === 電機工程學系 === 88 === In this thesis, we propose a system to analyze and classify the video shots of the baseball game TV program into fifteen categories. Our system consists of three modules: feature extraction, Hidden Markov Model training, and video shot categorization. First, we a...
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ndltd-TW-088NTHU04420632016-07-08T04:23:17Z http://ndltd.ncl.edu.tw/handle/56948464795946910779 Categorizing the Video Shots of the Baseball Game Program Using Hidden Markov Models 使用隱藏式馬可夫模型來作棒球節目視訊片段之分類系統 Chih-Yu Chang 張志宇 碩士 國立清華大學 電機工程學系 88 In this thesis, we propose a system to analyze and classify the video shots of the baseball game TV program into fifteen categories. Our system consists of three modules: feature extraction, Hidden Markov Model training, and video shot categorization. First, we analyze the motion, color, and texture information of input image sequence to generator our feature vector. Then, to train different HMMs, we use different training set of video shots. Finally, for an input video shot, we apply all the trained HMMs to find the most probably HMM and assign the corresponding category to the input video shot. The experimental results show that the average recognition rate is 84.72%. Chung-Lin Huang 黃仲陵 2000 學位論文 ; thesis 59 en_US |
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碩士 === 國立清華大學 === 電機工程學系 === 88 === In this thesis, we propose a system to analyze and classify the video shots of the baseball game TV program into fifteen categories. Our system consists of three modules: feature extraction, Hidden Markov Model training, and video shot categorization. First, we analyze the motion, color, and texture information of input image sequence to generator our feature vector. Then, to train different HMMs, we use different training set of video shots. Finally, for an input video shot, we apply all the trained HMMs to find the most probably HMM and assign the corresponding category to the input video shot. The experimental results show that the average recognition rate is 84.72%.
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Chung-Lin Huang |
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Chung-Lin Huang Chih-Yu Chang 張志宇 |
author |
Chih-Yu Chang 張志宇 |
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Chih-Yu Chang 張志宇 Categorizing the Video Shots of the Baseball Game Program Using Hidden Markov Models |
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Chih-Yu Chang |
title |
Categorizing the Video Shots of the Baseball Game Program Using Hidden Markov Models |
title_short |
Categorizing the Video Shots of the Baseball Game Program Using Hidden Markov Models |
title_full |
Categorizing the Video Shots of the Baseball Game Program Using Hidden Markov Models |
title_fullStr |
Categorizing the Video Shots of the Baseball Game Program Using Hidden Markov Models |
title_full_unstemmed |
Categorizing the Video Shots of the Baseball Game Program Using Hidden Markov Models |
title_sort |
categorizing the video shots of the baseball game program using hidden markov models |
publishDate |
2000 |
url |
http://ndltd.ncl.edu.tw/handle/56948464795946910779 |
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