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Visual-Language-Guided Task Planning for Horticultural Robots

17 January 2026
Jose Cuaran
Kendall Koe
Aditya Potnis
Naveen Kumar Uppalapati
Girish Chowdhary
    LM&Ro
ArXiv (abs)PDFHTML
Main:12 Pages
5 Figures
Bibliography:2 Pages
Abstract

Crop monitoring is essential for precision agriculture, but current systems lack high-level reasoning. We introduce a novel, modular framework that uses a Visual Language Model (VLM) to guide robotic task planning, interleaving input queries with action primitives. We contribute a comprehensive benchmark for short- and long-horizon crop monitoring tasks in monoculture and polyculture environments. Our main results show that VLMs perform robustly for short-horizon tasks (comparable to human success), but exhibit significant performance degradation in challenging long-horizon tasks. Critically, the system fails when relying on noisy semantic maps, demonstrating a key limitation in current VLM context grounding for sustained robotic operations. This work offers a deployable framework and critical insights into VLM capabilities and shortcomings for complex agricultural robotics.

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