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Automated Pruning of Polyculture Plants

Authors :
Presten, Mark
Parikh, Rishi
Aeron, Shrey
Mukherjee, Sandeep
Adebola, Simeon
Sharma, Satvik
Theis, Mark
Teitelbaum, Walter
Goldberg, Ken
Publication Year :
2022

Abstract

Polyculture farming has environmental advantages but requires substantially more pruning than monoculture farming. We present novel hardware and algorithms for automated pruning. Using an overhead camera to collect data from a physical scale garden testbed, the autonomous system utilizes a learned Plant Phenotyping convolutional neural network and a Bounding Disk Tracking algorithm to evaluate the individual plant distribution and estimate the state of the garden each day. From this garden state, AlphaGardenSim selects plants to autonomously prune. A trained neural network detects and targets specific prune points on the plant. Two custom-designed pruning tools, compatible with a FarmBot gantry system, are experimentally evaluated and execute autonomous cuts through controlled algorithms. We present results for four 60-day garden cycles. Results suggest the system can autonomously achieve 0.94 normalized plant diversity with pruning shears while maintaining an average canopy coverage of 0.84 by the end of the cycles. For code, videos, and datasets, see https://sites.google.com/berkeley.edu/pruningpolyculture.<br />Comment: CASE 2022, 8 pages. arXiv admin note: substantial text overlap with arXiv:2111.06014

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2208.10472
Document Type :
Working Paper