Open Access Journal

ISSN : 2456-1304 (Online)

International Journal of Engineering Research in Electronics and Communication Engineering(IJERECE)

Monthly Journal for Electronics and Communication Engineering

Open Access Journal

International Journal of Science Engineering and Management (IJSEM)

Monthly Journal for Science Engineering and Management

ISSN : 2456-1304 (Online)

Ultrasound Renal Abnormalities detection using ANN and Scale Invariant feature Transform

Author : Mohammed Asith N 1 Mohamed Thawfiq S 2 Pavan Kumar V 3 Aadhirai.S 4 Najumnissa Jamal D 5

Date of Publication :25th October 2019

Abstract: Artificial Neural Networks are one of the most frequently used classifiers for medical diagnostic tasks to detect diseases at an earlier stage. This research work aims to diagnose ultrasound(US) kidney defects such as kidney cyst, kidney calculus, and kidney tumor. We used the Multilayer Perceptions, and obtained 98 % accuracy with 10 hidden neurons for classification between normal and abnormal. This work also seeks to provide data on the preprocessing method using median and wiener filters on how much the speckle noise was removed and how much the Fuzzy C-Means clustering was used by segmentation method. Among these methods, SIFT has been implemented for the extraction of features, and these values are given as input to the classifier. SIFT is invariant transform characteristic to obtain unique invariant characteristics. Keypoint is the location of the image where a description is computed. The local structure and the key point are summarized in the feature descriptor.

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