Publication | Closed Access
Retinal vasculature classification using novel multifractal features
20
Citations
18
References
2015
Year
EngineeringRetinal Vasculature ClassificationBiometricsFeature ExtractionBiomedical EngineeringDiabetic RetinopathyImage AnalysisRetinaPattern RecognitionBiostatisticsMicrovascular DysfunctionRetinal Blood VesselsCardiovascular ImagingMachine VisionVascular ImageOphthalmologyVisual DiagnosisVascular BiologyMedical Image ComputingMedicineFractal Analysis
Retinal blood vessels have been implicated in a large number of diseases including diabetic retinopathy and cardiovascular diseases, which cause damages to retinal blood vessels. The availability of retinal vessel imaging provides an excellent opportunity for monitoring and diagnosis of retinal diseases, and automatic analysis of retinal vessels will help with the processes. However, state of the art vascular analysis methods such as counting the number of branches or measuring the curvature and diameter of individual vessels are unsuitable for the microvasculature. There has been published research using fractal analysis to calculate fractal dimensions of retinal blood vessels, but so far there has been no systematic research extracting discriminant features from retinal vessels for classifications. This paper introduces new methods for feature extraction from multifractal spectra of retinal vessels for classification. Two publicly available retinal vascular image databases are used for the experiments, and the proposed methods have produced accuracies of 85.5% and 77% for classification of healthy and diabetic retinal vasculatures. Experiments show that classification with multiple fractal features produces better rates compared with methods using a single fractal dimension value. In addition to this, experiments also show that classification accuracy can be affected by the accuracy of vessel segmentation algorithms.
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