Jujube Diseases Identification Image Dataset

Published: 17 February 2025| Version 1 | DOI: 10.17632/6vttpjr7xw.1
Contributors:
Md Mafiul Hasan Matin, Shehjin Erose Oishe, Sumon Ahmed

Description

The Jujube Diseases Identification Image Dataset provides high-resolution images and precise measurements of various jujube diseases, capturing key attributes such as size, color, and texture. This dataset serves as a valuable resource for agricultural research, offering detailed morphological and spectral data to aid in disease detection, classification, and management. Researchers can leverage these insights to refine cultivation techniques and enhance resistance to pests and diseases. Dataset Overview • Total Images: 720 original images, captured in real-world field conditions • Augmented Images: 4,320 (generated using data augmentation techniques) Augmentation Pipeline To enhance dataset diversity and improve model generalization, the following augmentation techniques were applied: 1. Horizontal flipping (50% probability) 2. Vertical flipping (30% probability) 3. Random brightness and contrast adjustments 4. Rotation within a range of -30° to +30° 5. Shear transformation along both X and Y axes 6. Addition of random noise This enriched dataset provides a robust foundation for developing deep learning models for automated jujube disease identification, contributing to precision agriculture and improved disease management strategies.

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Categories

Image Processing, Machine Learning, Deep Learning

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