The document presents a method for the automatic detection and classification of microaneurysms, which are early indicators of diabetic retinopathy, to aid in timely intervention and treatment of this prevalent eye disease. It details a process involving image preprocessing, feature extraction using Gabor filters, and classification utilizing multi-class classifiers, and evaluates the method's performance in terms of accuracy, sensitivity, and specificity. The paper highlights the significance of accurate detection given the increasing prevalence of diabetes worldwide and the resultant need for effective diagnostic techniques.