Cauliflower Leaf Diseases: A Computer Vision Dataset for Smart Agriculture

Published: 3 March 2025| Version 1 | DOI: 10.17632/x995snz7p3.1
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Description

The Cauliflower Leaf Disease Dataset is a curated collection of high-quality images designed for machine learning and deep learning applications in plant disease detection. The dataset comprises 2,661 images categorized into three classes: Healthy (934), Insect Hole (639), and Black Rot (1,088). The images are collected under varying lighting conditions and angles to enhance model generalization. Key Features: Healthy Leaves (934): Images of fresh, disease-free cauliflower leaves. Insect Hole (639): Leaves showing visible insect damage, such as holes caused by pests. Black Rot (1,088): Leaves affected by Xanthomonas campestris pv. campestris, a bacterial infection causing blackened veins and necrotic lesions. Applications: Computer Vision: Image segmentation, feature extraction, and object detection for plant pathology studies. Machine Learning: Traditional classifiers (SVM, Random Forest) and feature engineering techniques for automated classification. Deep Learning: Convolutional Neural Networks (CNNs), Transfer Learning (ResNet, VGG, EfficientNet), and Explainable AI (Grad-CAM) to identify disease patterns. Agricultural Decision Support: Real-time disease monitoring, precision farming applications, and smartphone-based diagnosis for farmers. This dataset is a crucial resource for researchers working on AI-driven plant disease identification and can contribute to the advancement of precision agriculture and sustainable farming solutions.

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Institutions

Daffodil International University

Categories

Horticulture, Computer Vision, Machine Learning, Sustainable Agriculture, Precision Agriculture, Deep Learning, Agriculture

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