AgriDoctor: A Multimodal Intelligent Assistant for Agriculture
By: Mingqing Zhang , Zhuoning Xu , Peijie Wang and more
Potential Business Impact:
Helps farmers find plant sicknesses using pictures and words.
Accurate crop disease diagnosis is essential for sustainable agriculture and global food security. Existing methods, which primarily rely on unimodal models such as image-based classifiers and object detectors, are limited in their ability to incorporate domain-specific agricultural knowledge and lack support for interactive, language-based understanding. Recent advances in large language models (LLMs) and large vision-language models (LVLMs) have opened new avenues for multimodal reasoning. However, their performance in agricultural contexts remains limited due to the absence of specialized datasets and insufficient domain adaptation. In this work, we propose AgriDoctor, a modular and extensible multimodal framework designed for intelligent crop disease diagnosis and agricultural knowledge interaction. As a pioneering effort to introduce agent-based multimodal reasoning into the agricultural domain, AgriDoctor offers a novel paradigm for building interactive and domain-adaptive crop health solutions. It integrates five core components: a router, classifier, detector, knowledge retriever and LLMs. To facilitate effective training and evaluation, we construct AgriMM, a comprehensive benchmark comprising 400000 annotated disease images, 831 expert-curated knowledge entries, and 300000 bilingual prompts for intent-driven tool selection. Extensive experiments demonstrate that AgriDoctor, trained on AgriMM, significantly outperforms state-of-the-art LVLMs on fine-grained agricultural tasks, establishing a new paradigm for intelligent and sustainable farming applications.
Similar Papers
A Multimodal Benchmark Dataset and Model for Crop Disease Diagnosis
CV and Pattern Recognition
Helps farmers spot plant sickness with pictures and words.
A Multimodal Conversational Assistant for the Characterization of Agricultural Plots from Geospatial Open Data
Artificial Intelligence
Lets farmers ask questions about crops using normal words.
AgriRegion: Region-Aware Retrieval for High-Fidelity Agricultural Advice
Artificial Intelligence
Gives farmers correct local growing advice.