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A Support Vector Machine Model for Pipe Crack Size Classification: Reseach on Svm Classification Ming Zuo
A Support Vector Machine Model for Pipe Crack Size Classification: Reseach on Svm Classification
Ming Zuo
The classification of pipe crack size from its pulse- echo ultrasonic signal is a difficult task but greatly significant for defect evaluation in pipe testing and the maintenance strategy making. In this book, we use Support Vector Machines (SVM) to classify the pipe crack into correct categories, large size or small size, with the ultrasonic signal data. In order to acquire an optimal input data set, we first select the features from the time and frequency domain on the ultrasonic data. Then a combined method, Sequential Backward Selection (SBS) and Sequential Forward Selection (SFS), is used for features reduction. These two steps are referred as data preprocessing in this book. To build SVM classifier, parameter selection is critical. In this book, a Kernel Fisher Discriminant Ratio (KFD Ratio) is proposed for speeding the parameter selection of the SVM classifier. As an indicator, KFD Ratio can greatly shorten computation time for finding the best parameters. To further improve the performance of the SVM classifier in terms of classification accuracy, a data dependent kernel is adopted for creating a more effective one.
| Media | Books Paperback Book (Book with soft cover and glued back) |
| Released | September 15, 2010 |
| ISBN13 | 9783639294057 |
| Publishers | VDM Verlag Dr. Müller |
| Pages | 96 |
| Dimensions | 226 × 6 × 150 mm · 149 g |
| Language | English |