Usefulness of interpretability methods to explain deep learning based plant stress phenotyping
Koushik Nagasubramanian, Asheesh K. Singh, Arti Singh, Soumik Sarkar,, Baskar Ganapathysubramanian

TL;DR
This study evaluates various interpretability methods for deep learning models in plant stress phenotyping, demonstrating their potential to generate scientific hypotheses by visualizing model decision features.
Contribution
It compares multiple interpretability techniques on a plant stress classification model, highlighting their strengths and limitations for scientific insight.
Findings
Most methods identify infected leaf regions as important features.
Some methods reveal spurious correlations used for classification.
Interpretability methods serve as hypothesis generation tools.
Abstract
Deep learning techniques have been successfully deployed for automating plant stress identification and quantification. In recent years, there is a growing push towards training models that are interpretable -i.e. that justify their classification decisions by visually highlighting image features that were crucial for classification decisions. The expectation is that trained network models utilize image features that mimic visual cues used by plant pathologists. In this work, we compare some of the most popular interpretability methods: Saliency Maps, SmoothGrad, Guided Backpropogation, Deep Taylor Decomposition, Integrated Gradients, Layer-wise Relevance Propagation and Gradient times Input, for interpreting the deep learning model. We train a DenseNet-121 network for the classification of eight different soybean stresses (biotic and abiotic). Using a dataset consisting of 16,573 RGB…
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Taxonomy
TopicsSmart Agriculture and AI · Remote Sensing in Agriculture · Plant Virus Research Studies
MethodsInterpretability
