This paper presents a novel method to grade the date fruits based on the combination of shape and texture
features. The method begins with reducing the specular reflection and small noise using a bilateral filter.
Threshold based segmentation is performed for background removal and fruit part selection from the given
image. Shape features is extracted using the contour of the date fruit and texture features are extracted
using Curvelet transform and Local Binary Pattern (LBP) from the selected date fruit region. Finally,
combinations of shape and texture features are fused to grade the dates into six grades. k-Nearest
Neighbour(k-NN) classifier yields the best grading rate compared to other two classifiers such as Support
Vector Machine (SVM) and Linear Discriminant(LDA) classifiers. The experiment result shows that our
technique achieves highest accuracy