Agri-CPJ: A Training-Free Explainable Framework for Agricultural Pest Diagnosis Using Caption-Prompt-Judge and LLM-as-a-Judge
arXiv cs.CL / 4/28/2026
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Key Points
- The paper introduces Agri-CPJ (Caption-Prompt-Judge), a training-free few-shot framework for agricultural pest/crop disease diagnosis that first produces a structured morphological caption before answering any diagnostic questions.
- It addresses two key issues in field-photo diagnosis: hallucinated species names from high-benchmark models and the lack of interpretable reasoning for practitioners.
- The method uses iterative caption refinement with multi-dimensional quality gating, and ablation results show skipping caption refinement significantly harms downstream accuracy.
- An LLM-as-a-judge then selects between two candidate diagnostic responses generated from complementary viewpoints using domain-specific criteria.
- On CDDMBench and AgMMU-MCQs, the approach improves disease classification and QA scores substantially, and it provides an auditable, human-readable caption-based rationale; the code and data are公開されている。
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