
Variants of Self-Organizing Maps
Applications in Image Quantization and Compression
LAP Lambert Academic Publishing
Published on 13. September 2010
Book
Paperback/Softback
80 pages
978-3-8383-2436-4 (ISBN)
Description
The self-organizing map (SOM) is an unsupervised learning algorithm which has been successfully applied to various applications. In the last several decades, there have been variants of SOM used in many application domains. In this work, two new SOM algorithms are developed for image quantization and compression. The first algorithm is a sample-size adaptive SOM algorithm that can be used for color quantization of images to adapt to the variations of network parameters and training sample size. Based on the sample-size adaptive self-organizing map, we use the sampling ratio of training data, rather than the conventional weight change between adjacent sweeps, as a stop criterion. As a result, it can significantly speed up the learning process. The second algorithm is a novel classified SOM method for edge preserving quantization of images using an adaptive subcodebook and weighted learning rate. The subcodebook sizes of two classes are automatically adjusted in training iterations that can be estimated incrementally. The proposed weighted learning rate updates the neuron efficiently no matter how large the weighting factor is.
More details
Language
English
Dimensions
Height: 220 mm
Width: 150 mm
Thickness: 6 mm
Weight
137 gr
ISBN-13
978-3-8383-2436-4 (9783838324364)
Schweitzer Classification
Persons
Chao-Hung Wang received his Ph.D. degree in Department of Computer Science and Engineering in 2009 from National Sun Yat-Sen University, Kaohsiung, Taiwan. His research interests include image processing, vector quantization, pattern recognition, and image retrieval. His advisors are Prof. Chung-Nan Lee and Prof. Chaur-Heh Hsieh.