Turmeric Plant Disease Dataset: Advancing AI for Agricultural Sustainability

Published: 30 December 2024| Version 1 | DOI: 10.17632/g46dvrcvwn.1
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Description

This dataset is a vital tool for researchers and professionals in agriculture, machine learning, and computer vision, focused on identifying and classifying diseases in turmeric plants. It is structured into two primary categories: the Original Dataset and the Augmented Dataset, offering high-quality images of turmeric plant leaves and rhizomes under various conditions, including: - Dry Leaf - Healthy Leaf - Leaf Blotch - Rhizome Rot To ensure broad applicability and improve model performance, the dataset includes augmented images generated using techniques such as flipping, rotation, noise addition, shifting, brightness adjustments, and zooming. These augmentations significantly increase the dataset’s diversity, enabling the training and evaluation of robust machine learning models. By leveraging this dataset, researchers can develop accurate systems for early disease detection and effective crop management. The dataset is instrumental in driving innovation in agricultural technology, crop protection, and sustainable farming practices, using cutting-edge computer vision and AI approaches. Key Features: - Original Dataset: - Number of Images: 791 - Format: .jpg - Description: High-resolution, annotated images of turmeric plant diseases. - Augmented Dataset: - Number of Images: 3702 - Format: .jpg - Description: Enhanced dataset with diverse samples created through data augmentation. Significance: This dataset supports the development of AI-driven tools for: - Disease classification and early detection. - Improved crop monitoring and disease management. - Advancing agricultural research and sustainable practices. By offering meticulously curated images and detailed annotations, this dataset lays the foundation for transformative advancements in turmeric plant disease diagnosis and AI-based agricultural solutions.

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Institutions

Daffodil International University

Categories

Computer Science, Computer Vision, Machine Learning, Plant Diseases, Agriculture

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