WeedNet: A Foundation Model-Based Global-to-Local AI Approach for Real-Time Weed Species Identification and Classification
Yanben Shen, Timilehin T. Ayanlade, Venkata Naresh Boddepalli, Mojdeh Saadati, Ashlyn Rairdin, Zi K. Deng, Muhammad Arbab Arshad, Aditya Balu, Daren Mueller, Asheesh K Singh, Wesley Everman, Nirav Merchant, Baskar Ganapathysubramanian, Meaghan Anderson, Soumik Sarkar, Arti Singh

TL;DR
WeedNet is a comprehensive AI model capable of real-time, global weed species identification, utilizing self-supervised learning and a global-to-local approach to achieve high accuracy and adaptability across diverse environments and species.
Contribution
This work introduces WeedNet, the first large-scale, foundation model-based weed identification system with a global-to-local strategy, enabling high accuracy and regional customization.
Findings
Achieved 91.02% accuracy across 1,593 weed species.
Local Iowa WeedNet model reached 97.38% accuracy for 85 weed classes.
Diversity in training data across growth stages improves model performance.
Abstract
Early identification of weeds is essential for effective management and control, and there is growing interest in automating the process using computer vision techniques coupled with AI methods. However, challenges associated with training AI-based weed identification models, such as limited expert-verified data and complexity and variability in morphological features, have hindered progress. To address these issues, we present WeedNet, the first global-scale weed identification model capable of recognizing an extensive set of weed species, including noxious and invasive plant species. WeedNet is an end-to-end real-time weed identification pipeline and uses self-supervised learning, fine-tuning, and enhanced trustworthiness strategies. WeedNet achieved 91.02% accuracy across 1,593 weed species, with 41% species achieving 100% accuracy. Using a fine-tuning strategy and a Global-to-Local…
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Taxonomy
TopicsSmart Agriculture and AI
MethodsSparse Evolutionary Training
