Digital Image Processing and Medical Image Processing present an
exciting and dynamic part of cognitive and pattern recognition
techniques. Diagnostic applications of medical images are very exciting
and they throw more insight about segmentation algorithms. This
monograph reflects an introductory methodology for medical image
segmentation using k-means clustering and subsequent optimization of
clusters by means of EM and SVD. Chapter 1 introduces the need for
segmentation of medical images and focus of the research. Chapter 2
discusses the general clustering algorithm and chapter 3 discusses the
review of K-means clustering algorithm, EM models for optimization of
clusters are analyzed in chapter 4. SVD optimization techniques are
elucidated in the chapter 5. chapter 6 shows the overall results and
discussion of this work. This monograph is concluded in chapter 7.To
achieve a complete segmentation, cooperation with higher processing
levels which use specific knowledge of the problem domain is necessary.
This monograph is useful for all Engineering undergraduate and graduates
students specializing in ECE, EEE, and computer science. This monograph
will be useful reference.