Class-specific Data Augmentation for Plant Stress Classification
Nasla Saleem, Aditya Balu, Talukder Zaki Jubery, Arti Singh, Asheesh, K. Singh, Soumik Sarkar, Baskar Ganapathysubramanian

TL;DR
This paper introduces an automated, class-specific data augmentation method using genetic algorithms to improve plant stress classification accuracy, especially in challenging, confounded datasets like soybean leaf stress images.
Contribution
It presents a novel genetic algorithm-based approach for automated class-specific data augmentation that enhances deep learning performance in plant stress classification tasks.
Findings
Achieved 97.61% mean-per-class accuracy on soybean stress dataset.
Significantly improved challenging class accuracies, e.g., from 83.01% to 88.89%.
Reduced computational cost by fine-tuning only the linear layer.
Abstract
Data augmentation is a powerful tool for improving deep learning-based image classifiers for plant stress identification and classification. However, selecting an effective set of augmentations from a large pool of candidates remains a key challenge, particularly in imbalanced and confounding datasets. We propose an approach for automated class-specific data augmentation using a genetic algorithm. We demonstrate the utility of our approach on soybean [Glycine max (L.) Merr] stress classification where symptoms are observed on leaves; a particularly challenging problem due to confounding classes in the dataset. Our approach yields substantial performance, achieving a mean-per-class accuracy of 97.61% and an overall accuracy of 98% on the soybean leaf stress dataset. Our method significantly improves the accuracy of the most challenging classes, with notable enhancements from 83.01% to…
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Taxonomy
TopicsLeaf Properties and Growth Measurement · Smart Agriculture and AI
MethodsSparse Evolutionary Training · Linear Layer · + ( 1 ) ⟷ 888 ⟷ ( 829 ) ⟷ 0881||How do I resolve a dispute on Expedia?
