Abstract:
Recently, pathological diagnosis plays a crucial role in many areas of medicine, and some researchers have proposed many models and algorithms for improving classificatio...Show MoreMetadata
Abstract:
Recently, pathological diagnosis plays a crucial role in many areas of medicine, and some researchers have proposed many models and algorithms for improving classification accuracy by extracting excellent feature or modifying the classifier. They have also achieved excellent results on pathological diagnosis using tongue images. However, pixel values can't express intuitive features of tongue images and different classifiers for training samples have different adaptability. Accordingly, this paper presents a robust approach to infer the pathological characteristics by observing tongue images. Our proposed method makes full use of the local information and similarity of tongue images. Firstly, tongue images in RGB color space are converted to Lab. Then, we compute tongue statistics information. In the calculation process, Lab space dictionary is created at first, through it, we compute statistic value for each dictionary value. After that, a method based on Doublets is taken for feature optimization. At last, we use XGBOOST classifier to predict the categories of tongue images. We achieve classification accuracy of 95.39% using statistics feature and the improved classifier, which is helpful for TCM (Traditional Chinese Medicine) diagnosis.
Date of Conference: 15-18 December 2016
Date Added to IEEE Xplore: 19 January 2017
ISBN Information:
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- IEEE Keywords
- Index Terms
- Color Space ,
- Tongue Images ,
- Excellent Results ,
- Statistical Features ,
- Statistical Information ,
- RGB Color Space ,
- Training Set ,
- Diagnosis Of Disease ,
- Support Vector Machine ,
- Random Forest ,
- Positive Samples ,
- Decision Tree ,
- Negative Samples ,
- K-nearest Neighbor ,
- Kernel Function ,
- Mahalanobis Distance ,
- Feature Extraction Methods ,
- Training Examples ,
- Gradient Boosting Decision Tree ,
- Color Model ,
- Color Gamut ,
- Polynomial Kernel ,
- Lab Color Space ,
- Metric Learning ,
- Polynomial Kernel Function
- Author Keywords
Keywords assist with retrieval of results and provide a means to discovering other relevant content. Learn more.
- IEEE Keywords
- Index Terms
- Color Space ,
- Tongue Images ,
- Excellent Results ,
- Statistical Features ,
- Statistical Information ,
- RGB Color Space ,
- Training Set ,
- Diagnosis Of Disease ,
- Support Vector Machine ,
- Random Forest ,
- Positive Samples ,
- Decision Tree ,
- Negative Samples ,
- K-nearest Neighbor ,
- Kernel Function ,
- Mahalanobis Distance ,
- Feature Extraction Methods ,
- Training Examples ,
- Gradient Boosting Decision Tree ,
- Color Model ,
- Color Gamut ,
- Polynomial Kernel ,
- Lab Color Space ,
- Metric Learning ,
- Polynomial Kernel Function
- Author Keywords