CottonSim: A vision-guided autonomous robotic system for cotton harvesting in Gazebo simulation
Thevathayarajh Thayananthan, Xin Zhang, Yanbo Huang, Jingdao Chen, Nuwan K. Wijewardane, Vitor S. Martins, Gary D. Chesser, Christopher T. Goodin

TL;DR
CottonSim introduces a vision-guided autonomous robotic system for cotton harvesting, tested in Gazebo simulation, aiming to improve sustainability and efficiency in cotton farming.
Contribution
This study presents a lightweight, vision-guided autonomous cotton picker built on ROS, integrating GPS and deep learning for navigation in simulation.
Findings
High accuracy in segmentation (mAP 85.2%)
GPS navigation achieved 100% completion rate
Map-based navigation reached 96.7% success
Abstract
Cotton is a major cash crop in the United States, with the country being a leading global producer and exporter. Nearly all U.S. cotton is grown in the Cotton Belt, spanning 17 states in the southern region. Harvesting remains a critical yet challenging stage, impacted by the use of costly, environmentally harmful defoliants and heavy, expensive cotton pickers. These factors contribute to yield loss, reduced fiber quality, and soil compaction, which collectively threaten long-term sustainability. To address these issues, this study proposes a lightweight, small-scale, vision-guided autonomous robotic cotton picker as an alternative. An autonomous system, built on Clearpath's Husky platform and integrated with the CottonEye perception system, was developed and tested in the Gazebo simulation environment. A virtual cotton field was designed to facilitate autonomous navigation testing. The…
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