TL;DR
This paper introduces SAGE, a scalable, knowledge-based visual reasoning system for crop disease diagnosis, supported by a large curated dataset and a fully explainable agentic model that improves accuracy without retraining.
Contribution
It presents the largest plant disease dataset and a novel autonomous reasoning agent that leverages symptom knowledge for accurate, explainable disease prediction across diverse crops.
Findings
Increases diagnosis accuracy by 16.2 percentage points with symptom knowledge.
Supports extension to new crops without retraining.
Provides a fully explainable reasoning trace for disease identification.
Abstract
Plant disease diagnosis is critical for food security, yet training disease-recognition models that generalize across crops, pathogens, and field conditions remains challenging because labeled disease images are far less abundant and standardized than data for other biotic stresses such as insects or weeds. Frontier vision-language models offer new opportunities through improved visual reasoning, but they still struggle with fine-grained disease identification due to the lack of structured, crop-specific symptom knowledge. To address this gap, we curate the largest plant disease image--symptom dataset to date, covering 335 crops, 1{,}251 disease classes, and approximately 839K images, designed to support training-free, agentic disease prediction. A scalable automated pipeline generates source-grounded symptom descriptions in which each claim is linked to a verbatim web quote; domain…
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