Temporal Vegetation Index-Based Unsupervised Crop Stress Detection via Eigenvector-Guided Contrastive Learning
Shafqaat Ahmad

TL;DR
EigenCL is an unsupervised contrastive learning framework that leverages temporal NDRE dynamics and eigen decomposition to detect crop stress early and accurately without labeled data.
Contribution
This paper introduces EigenCL, a novel unsupervised contrastive learning method guided by biological NDRE dynamics for early crop stress detection.
Findings
Achieved 76% early stress detection up to 12 days before traditional methods.
Formed meaningful physiological clusters with high clustering metrics.
Validated generalizability on independent datasets without retraining.
Abstract
Early detection of crop stress is vital for minimizing yield loss and enabling timely intervention in precision agriculture. Traditional approaches using NDRE often detect stress only after visible symptoms appear or require labeled datasets, limiting scalability. This study introduces EigenCL, a novel unsupervised contrastive learning framework guided by temporal NDRE dynamics and biologically grounded eigen decomposition. Using over 10,000 Sentinel-2 NDRE image patches from drought-affected Iowa cornfields, we constructed five-point NDRE time series per patch and derived an RBF similarity matrix. The principal eigenvector explaining 76% of the variance and strongly correlated (r = 0.95) with raw NDRE values was used to define stress-aware similarity for contrastive embedding learning. Unlike existing methods that rely on visual augmentations, EigenCL pulls embeddings together based on…
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Taxonomy
TopicsSmart Agriculture and AI
