Leaf Disease Dataset for Smart Agriculture Applications
收藏Zenodo2026-04-08 更新2026-05-26 收录
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https://zenodo.org/doi/10.5281/zenodo.19465596
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资源简介:
🌿 Wheat Leaf Disease Dataset for Deep Learning Applications
This dataset provides a curated collection of labeled wheat leaf images designed for the development and evaluation of machine learning and deep learning models for plant disease classification. It captures real-world agricultural variability and supports robust model training under diverse environmental conditions.
📦 Dataset Overview
The dataset consists of high-quality images of wheat leaves categorized into the following classes:
BlackPoint
FusariumFootRot
HealthyLeaf
LeafBlight
WheatBlast
Each class represents distinct visual symptoms observed in crop pathology, enabling effective supervised learning for multi-class classification tasks.
🧠 Data Characteristics
Collected from real-world agricultural environments
Includes variations in lighting, background, and leaf orientation
Contains natural noise and occlusions, reflecting practical deployment scenarios
Manually curated and verified for label consistency and quality
⚙️ Data Preparation
Images were cleaned and filtered to remove low-quality samples
Dataset structured into training, validation, and testing subsets
Preprocessing steps include:
Image resizing
Normalization
Class balancing (where applicable)
🚀 Applications
This dataset is suitable for a wide range of applications, including:
AI-based crop disease detection systems
Precision agriculture and smart farming solutions
Automated plant health monitoring
Decision-support systems for farmers and agronomists
🧪 Benchmark & Usage
The dataset supports development and evaluation of:
Convolutional Neural Networks (CNNs)
Vision Transformer (ViT) architectures
Hybrid CNN–Transformer models
It can be used for:
Multi-class image classification
Model benchmarking and comparison
Academic research and experimentation
Real-world deployment pipelines
🔗 Associated Resources
Kaggle Dataset:https://www.kaggle.com/datasets/khanaamer/wheat-leaf-disease-dataset
GitHub Repository (Model + Implementation):https://github.com/Aamer-Gituser/Leaf-Disease-Detection
📈 Research Context
This dataset has been utilized in a deep learning pipeline integrating CNN and Vision Transformer architectures, along with interpretability techniques such as Grad-CAM and deployment via a web-based interface.
📜 License and Usage
This dataset is released for academic and research purposes.Users are encouraged to cite the dataset appropriately when used in publications or projects.
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Zenodo创建时间:
2026-04-08



