Created by Shubham Kumar
Visit: Plant-Disease-Detector
Training and evaluating state-of-the-art deep architectures for plant disease classification task using pyTorch.
Models are trained on the preprocessed dataset which can be downloaded here.
Dataset is consisted of 38 disease classes from PlantVillage dataset and 1 background class from Stanford's open dataset of background images - DAGS.
80% of the dataset is used for training and 20% for validation.
Model | Library | Training Platform | Accuracy |
---|---|---|---|
Resnet34 | Fastai | Google Cloud Platform | 99.654% |
Name | No of Classes | Class Names |
---|---|---|
Apple | 04 | 'Apple___Apple_scab','Apple___Black_rot','Apple___Cedar_apple_rust' 'Apple___healthy' |
Blueberry | 01 | 'Blueberry___healthy' |
Cherry | 02 | 'Cherry_(including_sour)Powdery_mildew', 'Cherry(including_sour)_healthy' |
Corn | 04 | 'Corn___Cercospora_leaf_spot', 'Corn___Common_rust','Corn___Northern_Leaf_Blight','Corn___healthy' |
Grape | 04 | 'Grape___Black_rot','Grape___Esca_(Black_Measles)','Leaf_blight_(Isariopsis_Leaf_Spot)','Grape___healthy' |
Orange | 01 | 'Orange___Haunglongbing_(Citrus_greening)' |
Peach | 02 | 'Peach___Bacterial_spot','Peach___healthy' |
Pepper | 02 | 'Pepper,_bell___Bacterial_spot','Pepper,_bell___healthy' |
Potato | 03 | 'Potato___Early_blight','Potato___Late_blight','Potato___healthy' |
Raspberry | 01 | 'Raspberry___healthy' |
Soyabean | 01 | 'Soybean___healthy' |
Squash | 01 | 'Squash___Powdery_mildew' |
Strawberry | 02 | 'Strawberry___Leaf_scorch','Strawberry___healthy' |
Tomato | 10 | Tomato: 'Bacterial_spot','Early_blight', 'Late_blight', 'Leaf_Mold', 'Septoria_leaf_spot', 'Spider_mites','Target_Spot', 'Yellow_Leaf_Curl_Virus', 'Mosaic_virus', 'Healthy' |