Empirical Performance Evaluation of Raster-to-Vector Conversion Methods: A Study on Multi-Level Interactions between Different Factors
Many factors, such as noise level in the original image and the noise-removal methods that clean the image prior to performing a vectorization, may play an important role in affecting the line detection of raster-to-vector conversion methods. In this paper, we propose an empirical performance evalua...
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my.usim-81282015-12-31T07:21:21Z Empirical Performance Evaluation of Raster-to-Vector Conversion Methods: A Study on Multi-Level Interactions between Different Factors Hasan S. M., Al-Khaffaf, Abdullah Z, Talib, Rosalina, Abdul Salam, Raster-To-Vector Conversion Performance Evaluation Salt/Pepper Noise Engineering Drawing Binary Image Statistical Analysis Repeated Measure ANOVA Document Analysis And Recognition Many factors, such as noise level in the original image and the noise-removal methods that clean the image prior to performing a vectorization, may play an important role in affecting the line detection of raster-to-vector conversion methods. In this paper, we propose an empirical performance evaluation methodology that is coupled with a robust statistical analysis method to study many factors that may affect the quality of line detection. Three factors are studied: noise level, noise-removal method, and the raster-to-vector conversion method. Eleven mechanical engineering drawings, three salt-and-pepper noise levels, six noise-removal methods, and three commercial vectorization methods were used in the experiment. The Vector Recovery Index (VRI) of the detected vectors was the criterion used for the quality of line detection. A repeated measure ANOVA analyzed the VRI scores. The statistical analysis shows that all the studied factors affected the quality of line detection. It also shows that two-way interactions between the studied factors affected line detection. 2015-05-18T06:13:29Z 2015-05-18T06:13:29Z 2011 Article 0916-8532 en Ieice-Inst Electronics Information Communications Eng |
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Raster-To-Vector Conversion Performance Evaluation Salt/Pepper Noise Engineering Drawing Binary Image Statistical Analysis Repeated Measure ANOVA Document Analysis And Recognition |
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Raster-To-Vector Conversion Performance Evaluation Salt/Pepper Noise Engineering Drawing Binary Image Statistical Analysis Repeated Measure ANOVA Document Analysis And Recognition Hasan S. M., Al-Khaffaf, Abdullah Z, Talib, Rosalina, Abdul Salam, Empirical Performance Evaluation of Raster-to-Vector Conversion Methods: A Study on Multi-Level Interactions between Different Factors |
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Many factors, such as noise level in the original image and the noise-removal methods that clean the image prior to performing a vectorization, may play an important role in affecting the line detection of raster-to-vector conversion methods. In this paper, we propose an empirical performance evaluation methodology that is coupled with a robust statistical analysis method to study many factors that may affect the quality of line detection. Three factors are studied: noise level, noise-removal method, and the raster-to-vector conversion method. Eleven mechanical engineering drawings, three salt-and-pepper noise levels, six noise-removal methods, and three commercial vectorization methods were used in the experiment. The Vector Recovery Index (VRI) of the detected vectors was the criterion used for the quality of line detection. A repeated measure ANOVA analyzed the VRI scores. The statistical analysis shows that all the studied factors affected the quality of line detection. It also shows that two-way interactions between the studied factors affected line detection. |
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Article |
author |
Hasan S. M., Al-Khaffaf, Abdullah Z, Talib, Rosalina, Abdul Salam, |
author_facet |
Hasan S. M., Al-Khaffaf, Abdullah Z, Talib, Rosalina, Abdul Salam, |
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Hasan S. M., Al-Khaffaf, |
title |
Empirical Performance Evaluation of Raster-to-Vector Conversion Methods: A Study on Multi-Level Interactions between Different Factors |
title_short |
Empirical Performance Evaluation of Raster-to-Vector Conversion Methods: A Study on Multi-Level Interactions between Different Factors |
title_full |
Empirical Performance Evaluation of Raster-to-Vector Conversion Methods: A Study on Multi-Level Interactions between Different Factors |
title_fullStr |
Empirical Performance Evaluation of Raster-to-Vector Conversion Methods: A Study on Multi-Level Interactions between Different Factors |
title_full_unstemmed |
Empirical Performance Evaluation of Raster-to-Vector Conversion Methods: A Study on Multi-Level Interactions between Different Factors |
title_sort |
empirical performance evaluation of raster-to-vector conversion methods: a study on multi-level interactions between different factors |
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Ieice-Inst Electronics Information Communications Eng |
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2015 |
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1645152344926584832 |
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13.214268 |