Report | Code |
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Jupyter Notebook | |
HTML | Kaggle Notebook |
Misdiagnosis of the many diseases impacting agricultural crops can lead to misuse of chemicals leading to the emergence of resistant pathogen strains, increased input costs, and more outbreaks with significant economic loss and environmental impacts. Current disease diagnosis based on human scouting is time-consuming and expensive, and although computer-vision based models have the promise to increase efficiency, the great variance in symptoms due to age of infected tissues, genetic variations, and light conditions within trees decreases the accuracy of detection.
The Plant Pathology Challenge we have attended consists in training a model using images of the training dataset to
Submissions are evaluated on mean column-wise ROC AUC.
Both the training and the testing datasets are composed of 1821 high-quality, real-life symptom images of multiple apple foliar diseases to be classified into four categories: healthy
, multiple_diseases
, rust
, scab
.
SMOTE
ImageDataGenerator
Model | ROC AUC |
---|---|
Keras DenseNet121 |
0.972 |
InPhyT EKM |
0.937 |