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Title

A Novel Approach of Intuitive K-means Clustering for Renal Calculi Detection in Ultrasound Images.

Authors

Upadhyay, Pawan Kumar; Sharma, Arun; chandra, Satish

Abstract

Medical images are too fuzzy for discrete boundaries. This paper describes a fuzzy rule based seed point optimization in K-mean clustering method with a application in image segmentation. Prior information about the subject helps to elongate the cluster class and able to identify the target seed point smoothly for the detection of renal calculi oftenly called as a kidney stone. Kidney is a source organ for urology disorder which can be protected by efficient kidney stone detection technique in ultrasound images. Proposed method of clustering reduces the number of iterations for elobrating the region of interest in entitled images. This approach promising to give a more accurate solution for ultrasound images and it also enhances the image retrieval as compared to classical clustering methods. The experimental results justify the effectiveness of proposed approach by reducing the computational time without effecting the segmentation quality which can be validated by peak signal to noise ratio value. Results are validated on 150 Ultrasound image samples having six classes of renal calculi.

Subjects

KIDNEY stones; DIAGNOSTIC imaging; KIDNEY stones diagnosis; IMAGE segmentation; IMAGE processing

Publication

International Journal on Electrical Engineering & Informatics, 2018, Vol 10, Issue 1, p126

ISSN

2085-6830

Publication type

Academic Journal

DOI

10.15676/ijeei.2018.10.1.9

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