This document discusses a method for detecting diseases in wheat crops using image processing and artificial neural networks. It involves taking digital images of wheat crop leaves and preprocessing the images by applying Gaussian and median filters to reduce noise. The images are then segmented using CIELAB color space. Texture features like area, perimeter, contrast, and energy are extracted from the images using Gabor filters. These features are then fed into an artificial neural network classifier to identify the type of disease present in the wheat crop. The method aims to help farmers more quickly and accurately detect diseases so they can better manage their crops and increase agricultural productivity.