Feature Extraction using Histogram of Oriented Gradients for Image Classification in Maize Leaf Diseases
Dublin Core
Title
Feature Extraction using Histogram of Oriented Gradients for Image Classification in Maize Leaf Diseases
Subject
Feature extraction, ORB, HOG, KAZE, Image classification, machine learning, and classifier
Description
The paper presents feature extraction methods and classification algorithms used to classify maize leaf disease images. From maize disease images, features are extracted and passed to the machine learning classification algorithm to identify the possible disease based on the features detected using the feature extraction method. The maize disease images used include images of common rust, leaf spot, and northern leaf blight and healthy images. An evaluation was done for the feature extraction method to see which feature extraction method performs best with image classification algorithms. Based on the evaluation, the outcomes revealed Histogram of Oriented Gradients performed best with classifiers compared to KAZE and Oriented FAST and rotated BRIEF. The random forest classifier emerged the best in terms of image classification, based on four performance metrics which are accuracy, precision, recall, and F1-score. The experimental outcome indicated that the random forest had 0.74 accuracy, 0.77 precision, 0.77 recall, and 0.75 F1-score.
Creator
Vincent Mbandu Ochango, John Gichuki Ndia, Geoffrey Mariga Wambugu
Source
www.ijcit.com
Date
August 2022
Contributor
peri irawan
Format
pdf
Language
english
Type
text
Files
Collection
Citation
Vincent Mbandu Ochango, John Gichuki Ndia, Geoffrey Mariga Wambugu, “Feature Extraction using Histogram of Oriented Gradients for Image Classification in Maize Leaf Diseases,” Repository Horizon University Indonesia, accessed May 25, 2025, https://repository.horizon.ac.id/items/show/9035.