Interpretable Machine Learning-Derived Spectral Indices for Vegetation Monitoring
Ali Lotfi, Adam Carter, Thuan Ha, Mohammad Meysami, Kwabena Nketia, Steve Shirtliffe

TL;DR
The paper introduces the Spectral Feature Polynomial (SFP) framework, an automated method for discovering interpretable spectral indices from multispectral imagery, improving vegetation monitoring accuracy and transparency.
Contribution
It presents a systematic, data-driven approach to generate compact, interpretable spectral indices that outperform traditional indices in agricultural applications.
Findings
SFP achieved 98.6% accuracy in Kochia detection, surpassing established indices.
Stage-specific indices from SFP achieved over 93% accuracy in wheat classification.
The framework produces transparent, generalizable equations for vegetation monitoring.
Abstract
Spectral indices such as NDVI have driven vegetation monitoring for decades, yet their design remains largely manual and ad hoc. Their usefulness stems not only from their empirical performance, but also from algebraic forms that remain compact and biologically interpretable. However, the space of possible algebraic expressions relating spectral bands is effectively infinite, making systematic search impractical without structural constraints. We introduce the Spectral Feature Polynomial (SFP) framework, a general pipeline that automatically discovers compact, interpretable spectral indices from labeled multispectral imagery. SFP constructs a library of ratio-based spectral features that inherit illumination invariance by construction. It then applies cross-validated feature selection and continuous coefficient optimization to produce a single closed-form equation per task, transparent…
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