Litcius/Paper detail

Image Preprocessing in Classification and Identification of Diabetic Eye Diseases

Rubina Sarki, Khandakar Ahmed, Hua Wang, Yanchun Zhang, Jiangang Ma, Kate Wang

2021Data Science and Engineering140 citationsDOIOpen Access PDF

Abstract

Diabetic eye disease (DED) is a cluster of eye problem that affects diabetic patients. Identifying DED is a crucial activity in retinal fundus images because early diagnosis and treatment can eventually minimize the risk of visual impairment. The retinal fundus image plays a significant role in early DED classification and identification. An accurate diagnostic model's development using a retinal fundus image depends highly on image quality and quantity. This paper presents a methodical study on the significance of image processing for DED classification. The proposed automated classification framework for DED was achieved in several steps: image quality enhancement, image segmentation (region of interest), image augmentation (geometric transformation), and classification. The optimal results were obtained using traditional image processing methods with a new build convolution neural network (CNN) architecture. The new built CNN combined with the traditional image processing approach presented the best performance with accuracy for DED classification problems. The results of the experiments conducted showed adequate accuracy, specificity, and sensitivity.

Topics & Concepts

Computer scienceArtificial intelligencePreprocessorConvolutional neural networkImage processingPattern recognition (psychology)Image qualityIdentification (biology)Fundus (uterus)Computer visionSegmentationContextual image classificationDigital image processingImage segmentationImage (mathematics)MedicineOphthalmologyBiologyBotanyRetinal Imaging and AnalysisArtificial Intelligence in HealthcareDigital Imaging for Blood Diseases