Objective: To develop an automated system to classify extra #oculardiseases
Study Design: Retrospective cohort
Method: The entire dataset consists of about 7,244 labelled
images of patients from Drashti Netralaya Eye Hospital in Gujarat,
India. Five diseases were selected for classification: #Cornealscars,
#DermoidCyst, #Strabismus, #Ptosis, and Ocular Surface Disease. Histogram
of Oriented Gradient feature descriptors were utilized with Support
Vector Machines and Logistic Regression. Modern Neural Network
architectures were also applied. Bottleneck CNN and Logistic Regression
(Balanced) both performed well according to different error
measurements. This work outlines the development of a classifier for
extra ocular conditions that uses natural, noisy images of faces taken
with point-and-shoot cameras.
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Automated Diagnostic Classifier for Extra #OcularDiseases by Shreya Shah in BJSTR
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