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AlphaGarden: Learning to Autonomously Tend a Polyculture Garden

Authors :
Presten, Mark
Avigal, Yahav
Theis, Mark
Sharma, Satvik
Parikh, Rishi
Aeron, Shrey
Mukherjee, Sandeep
Oehme, Sebastian
Adebola, Simeon
Teitelbaum, Walter
Kamat, Varun
Goldberg, Ken
Publication Year :
2021

Abstract

This paper presents AlphaGarden: an autonomous polyculture garden that prunes and irrigates living plants in a 1.5m x 3.0m physical testbed. AlphaGarden uses an overhead camera and sensors to track the plant distribution and soil moisture. We model individual plant growth and interplant dynamics to train a policy that chooses actions to maximize leaf coverage and diversity. For autonomous pruning, AlphaGarden uses two custom-designed pruning tools and a trained neural network to detect prune points. We present results for four 60-day garden cycles. Results suggest AlphaGarden can autonomously achieve 0.96 normalized diversity with pruning shears while maintaining an average canopy coverage of 0.86 during the peak of the cycle. Code, datasets, and supplemental material can be found at https://github.com/BerkeleyAutomation/AlphaGarden.<br />Comment: Paper revised, extended, and resubmitted. See "Automated Pruning of Polyculture Plants."

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2111.06014
Document Type :
Working Paper