Abstract:
In order to improve the correction accuracy on tongue colors by use of a Munsell colorchecker, this research aims to design a new colorchecker by aid of tongue color spac...Show MoreMetadata
Abstract:
In order to improve the correction accuracy on tongue colors by use of a Munsell colorchecker, this research aims to design a new colorchecker by aid of tongue color space. Three essential issues leading to the development of this space-based colorchecker are elaborately investigated in this study. First, based on a large and comprehensive tongue database, tongue color space is established by which all visible colors can be classified as tongue or nontongue colors. Hence, colors of the designed tongue colorchecker are selected from tongue colors to achieve high correction performance. Second, the minimum sufficient number of colors involved in a colorchecker is yielded by comparing the correction accuracy when different number (ranged from 10 to 200) of colors are contained. Thereby, 24 colors are included because the obtained minimum number of colors is 20. Finally, criteria for optimal color selection and its corresponding objective function are presented. Two color selection methods, i.e., greedy and clustering-based selection method, are proposed to solve the objective function. Experimental results show that clustering-based one outperforms its counterpart to generate the new tongue colorchecker. Compared to a Munsell colorchecker, this proposed space-based colorchecker can greatly improve the correction accuracy by 48%. Further experimental results on more correction task also validate its effectiveness and superiority.
Published in: IEEE Journal of Biomedical and Health Informatics ( Volume: 17, Issue: 2, March 2013)
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- IEEE Keywords
- Image color analysis ,
- Tongue ,
- Color ,
- Accuracy ,
- Training ,
- Imaging ,
- Matrix converters
- Index Terms
- Objective Function ,
- Selection Method ,
- Comprehensive Database ,
- Color Vision ,
- Color Space ,
- Correct Performance ,
- Accurate Correction ,
- Clustering-based Methods ,
- Greedy Selection ,
- Computation Time ,
- Training Dataset ,
- Combination Of Parameters ,
- Total Distance ,
- Diversity Measures ,
- Orange Color ,
- Correction Model ,
- Imaging Conditions ,
- Drawback Of This Method ,
- Sum Of Distances ,
- Blue Points ,
- CIELAB Color Space ,
- Color Correction ,
- Selection Pool ,
- Best Combination Of Parameters ,
- Spectral Reconstruction ,
- Chromaticity Coordinates ,
- Color Groups ,
- Color Distribution ,
- Benchmark Results ,
- Optimum Solution
- Author Keywords
- MeSH Terms
Keywords assist with retrieval of results and provide a means to discovering other relevant content. Learn more.
- IEEE Keywords
- Image color analysis ,
- Tongue ,
- Color ,
- Accuracy ,
- Training ,
- Imaging ,
- Matrix converters
- Index Terms
- Objective Function ,
- Selection Method ,
- Comprehensive Database ,
- Color Vision ,
- Color Space ,
- Correct Performance ,
- Accurate Correction ,
- Clustering-based Methods ,
- Greedy Selection ,
- Computation Time ,
- Training Dataset ,
- Combination Of Parameters ,
- Total Distance ,
- Diversity Measures ,
- Orange Color ,
- Correction Model ,
- Imaging Conditions ,
- Drawback Of This Method ,
- Sum Of Distances ,
- Blue Points ,
- CIELAB Color Space ,
- Color Correction ,
- Selection Pool ,
- Best Combination Of Parameters ,
- Spectral Reconstruction ,
- Chromaticity Coordinates ,
- Color Groups ,
- Color Distribution ,
- Benchmark Results ,
- Optimum Solution
- Author Keywords
- MeSH Terms