Microaneurysm Detection in Diabetic Retinopathy Using Genetic Algorithm and SVM Classification Techniques

Author(s):  
Nitta Gnaneswara Rao ◽  
S. Deva Kumar ◽  
T. Sravani ◽  
N. Ramakrishnaiah ◽  
V. Rama Krishna S
Ophthalmology ◽  
2018 ◽  
pp. 53-68 ◽  
Author(s):  
Upendra Kumar

Considering Retinal image as textured image, its texture based segmentation is required to identify the presence of retinal diseases. This pre-processing is important in automatic detection system for recognizing the abnormality present in the retinal images. Likewise, the proposed system mainly focused on diabetic retinopathy disease caused into eye –retina, generally leads to eye-blindness. Inspired from robust human's texture based segmentation capability, a mathematical model of the eye was formulated. A texture based Gabor filter was applied to get the output feature helping in detecting the abnormality and deriving statistical properties, further used in segmentation and classification. This work deals with the better separation of various clusters of Gabor filter output features, in order to get better segmentation efficiency. This was also followed by formalizing an objective function to tune filter parameters with Gradient descent and further Genetic Algorithm. This paper showed both qualitative and quantitative segmentation results with improved efficiency.


2020 ◽  
Vol 7 (5) ◽  
pp. 993
Author(s):  
Muhammad Ezar Al Rivan ◽  
Steven Steven ◽  
William Tanzil

<p class="Abstrak"><em>Diabetic Retinopathy</em> adalah komplikasi dari diabetes yang mengakibatkan gangguan pada retina mata. Gangguan tersebut dapat diketahui dengan deteksi awal melalui data yang diekstraksi dari citra mata. Deteksi awal dapat dilakukan dengan menggunakan metode <em>clustering</em>. Metode yang digunakan yaitu <em>Fuzzy C-Means</em> dan <em>K-Means</em>. <em>Fuzzy C-Means</em> dan <em>K-Means</em> memiliki kelemahan dari jumlah iterasi yang besar. Jumlah iterasi pada <em>Fuzzy C-Means</em> dan <em>K-Means</em> dapat dioptimasi dengan menggunakan Algoritma Genetika. Optimasi dilakukan dengan cara mengganti bagian pada <em>Fuzzy C-Means</em> dan <em>K-Means</em> pada saat menentukan pusat <em>cluster</em>. Dataset yang digunakan pada penelitian adalah dataset <em>Diabetic Retinopathy</em>. Hasil optimasi sebelum dan sesudah  hybrid Algoritma Genetika pada <em>Fuzzy C-Means</em> terlihat pada nilai rata-rata iterasi dari 17,1 menjadi 6,65 terjadi penurunan sebesar 61,11% dan pada <em>K-Means</em> terlihat pada nilai rata-rata iterasi dari 10,85 menjadi 7,35 terjadi penurunan sebesar 32,25%. Berdasarkan hasil perbandingan nilai rata-rata iterasi Algoritma Genetika–<em>Fuzzy C-Means</em> dan Algoritma Genetika-K-Means maka dapat disimpulkan bahwa Algoritma Genetika-<em>Fuzzy C-Means</em> memiliki jumlah iterasi yang lebih baik dibanding Algoritma Genetika-<em>K-Means</em>. Algoritma Genetika-<em>Fuzzy C-Means</em> juga memiliki <em>inter cluster distance </em>yang paling kecil dan <em>intra cluster distance </em>yang paling besar.</p><p class="Abstrak"> </p><p class="Abstrak"><em><strong>Abstract</strong></em></p><p class="Abstract"><em>Diabetic Retinopathy is diabetic complication that cause retina disorder. Retina disorder can be known from data extracted from eye image. Early detection conduct using clustering. These methods are Fuzzy C-Means and K-Means. These methods have large number of iteration as weakness. Number of iteration can be optimized using genetic algorithm. Optimization conducted by replace a part from Fuzzy C-Means dan K-Means that use to generate early centroid. The dataset used in the study is a dataset of diabetic retinopathy. The optimization results before and after hybrid GeneticAlgorithm on Fuzzy C-Means are the average iteration values decreased from 17.1 to 6.65, decreasing 61,11% and in K-Means are the average iteration values decreased from 10.85 to 7.35 decreasing 32,25%. Based on the comparison of Genetic Algorithm  Fuzzy C-Means and Genetic Algorithm K-Means iterations, it can be concluded that Genetic Algorithm Fuzzy C-Means has a better number of iteration than Genetic Algorithm K-Means. Genetic Algorithm-Fuzzy-C-Means has smallest inter cluster distance and biggest intra cluster distance.</em></p><p class="Abstrak"><em><strong><br /></strong></em></p>


Author(s):  
D. Koc-San ◽  
N. K. Sonmez

Greenhouse detection using remote sensing technologies is an important research area for yield estimation, sustainable development, urban and rural planning and management. An approach was developed in this study for the detection and delineation of greenhouse areas from high resolution satellite imagery. Initially, the candidate greenhouse patches were detected using supervised classification techniques. For this purpose, Maximum Likelihood (ML), Random Forest (RF), and Support Vector Machines (SVM) classification techniques were applied and compared. Then, sieve filter and morphological operations were performed for improving the classification results. Finally, the obtained candidate plastic and glass greenhouse areas were delineated using boundary tracing and Douglas Peucker line simplification algorithms. The proposed approach was implemented in the Kumluca district of Antalya, Turkey utilizing pan-sharpened WorldView-2 satellite imageries. Kumluca is the prominent district of Antalya with greenhouse cultivation and includes both plastic and glass greenhouses intensively. When the greenhouse classification results were analysed, it can be stated that the SVM classification provides most accurate results and RF classification follows this. The SVM classification overall accuracy was obtained as 90.28%. When the greenhouse boundary delineation results were considered, the plastic greenhouses were delineated with 92.11% accuracy, while glass greenhouses were delineated with 80.67% accuracy. The obtained results indicate that, generally plastic and glass greenhouses can be detected and delineated successfully from WorldView-2 satellite imagery.


2014 ◽  
Vol 889-890 ◽  
pp. 617-621 ◽  
Author(s):  
Qing Hua Mao ◽  
Hong Wei Ma ◽  
Xu Hui Zhang

SVM classification model has been widely applied to mechanical equipment fault diagnosis and material defects classification. It is difficult to choose the optimal value of penalty factor C and kernel function parameter for SVM model. Therefore, an improved genetic algorithm to optimize SVM parameters is put forward, which improves crossover and mutation operators and enhances convergence properties by using the best individual retention strategy. UCI data set is used to verify the algorithm. The testing results show that the algorithm can quickly and effectively select optimal SVM parameters and improve SVM classification accuracy.


2021 ◽  
Vol 11 (13) ◽  
pp. 6178
Author(s):  
Nasser Tamim ◽  
Mohamed Elshrkawey ◽  
Hamed Nassar

Diabetic retinopathy (DR) and glaucoma can both be incurable if they are not detected early enough. Therefore, ophthalmologists worldwide are striving to detect them by personally screening retinal fundus images. However, this procedure is not only tedious, subjective, and labor-intensive, but also error-prone. Worse yet, it may not even be attainable in some countries where ophthalmologists are in short supply. A practical solution to this complicated problem is a computer-aided diagnosis (CAD) system—the objective of this work. We propose an accurate system to detect at once any of the two diseases from retinal fundus images. The accuracy stems from two factors. First, we calculate a large set of hybrid features belonging to three groups: first-order statistics (FOS), higher-order statistics (HOS), and histogram of oriented gradient (HOG). Then, these features are skillfully reduced using a genetic algorithm scheme that selects only the most relevant and significant of them. Finally, the selected features are fed to a classifier to detect one of three classes: DR, glaucoma, or normal. Four classifiers are tested for this job: decision tree (DT), naive Bayes (NB), k-nearest neighbor (kNN), and linear discriminant analysis (LDA). The experimental work, conducted on three publicly available datasets, two of them merged into one, shows impressive performance in terms of four standard classification metrics, each computed using k-fold crossvalidation for added credibility. The highest accuracy has been provided by DT—96.67% for DR, 100% for glaucoma, and 96.67% for normal.


Diabetes is a worldwide spread disease which is increasing rapidly and found in all age people. Diabetic Retinopathy is a retinal abnormality caused by diabetes. Which can lead to permanent vision loss or blindness. As Diabetic Retinopathy pathology damages retina without any early symptoms, it is very important to do the regular screening of retina and detection of Retinopathy. Ophthalmologist does the identification of Retinopathy manually which is time consuming and error prone. Hence, there is a need for early and correct automatic detection of Diabetic Retinopathy. Many researches have done for detection using Image Processing, Artificial Intelligence, Neural Network and Machine Learning. This paper presents a review on Diabetic Retinopathy Detection systems. This review highlights the public datasets available for the evaluation of the detection systems with different segmentation and classification techniques. We have discussed the analysis of different classification and segmentation techniques used in DR detection.


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