학술논문

Kernel Induced Rough c-means clustering for lymphocyte image segmentation
Document Type
Conference
Source
2012 4th International Conference on Intelligent Human Computer Interaction (IHCI) Intelligent Human Computer Interaction (IHCI), 2012 4th International Conference on. :1-6 Dec, 2012
Subject
Computing and Processing
Communication, Networking and Broadcast Technologies
General Topics for Engineers
Signal Processing and Analysis
Image segmentation
Kernel
Image color analysis
Blood
Clustering algorithms
Approximation methods
Accuracy
Lymphocyte
image segmentation
parametric kernel
clustering
rough sets
Language
Abstract
Blood microscopic image segmentation is a fundamental tool for automated diagnosis of hematological disorders. In particular, lymphoblast image segmentation acts as the foundation for all image based leukemia diagnostic system. Precision in image segmentation is a necessary condition for improving the diagnostic accuracy in automated cytology. Since the diagnostic information content of the segmented images are plentiful, suitable segmentation routines need to be developed for better disease recognition. In this paper, Kernel Induced Rough C-means (KIRCM) clustering algorithm is introduced for the segmentation of human lymphocyte images. Rough C-means clustering (RCM) is performed in higher dimensional feature space to obtain improved segmentation accuracy and to facilitate automated Acute Lymphoblastic Leukemia (ALL) detection. Comparative analysis reveals that use of rough sets in kernel space clustering for leukocyte segmentation gives the proposed scheme an edge over existing schemes.