Abstract:
Diabetes Mellitus type 2 (DM2) is a disease with the leading cause of death in the world. Recent statistics from world
health organization projects that by 2030 this disease will be the seventh leading cause of death. The major complications of the
disease relate to lower limb amputation and pathogenesis of foot. The main focus of this paper is developing a diagnostic method for
classifying the feet images for early detection of Diabetes Mellitus type 2 (DM2) based on thermal images and support vector
machine (SVM) classifier. Foot images of 50 patients are considered, where the left and right foot are separately taken to train and
test the model. The proposed methodology contains the joint information of scale-spaces and feature across the images. The work is
mainly divided into four stages to obtain the extracted features. The Gaussian derivative filter is considered in the first stage, feature
transform is done in the second stage. The third stage is feature extraction via discrete pixel codes and integrated coding is the last
stage. The SVM classifier is considered to build the predictive model, where extracted feature vectors and class labels are fed as
input to the classifier. The experimental results showed that the proposed model got a 97.24% prediction accuracy. When comparing
the proposed system with the relevant systems our algorithm has the best predictive accuracy.