Drone-Based Harvest Data Prediction Can Reduce On-Farm Food Loss and Improve Farmer Income
Haozhou Wang, Li Tang, Erika Nishida, Yoichiro Kato, Yuya Fukano, Wei Guo
Abstract
> 3,000) automatically and nondestructively using drone remote sensing and image analysis. The individual sizes were fed to the temperature-based growth model and predicted the optimal harvesting date. Two years of field experiments revealed that our pipeline successfully estimated and predicted the head size of all broccolis with high accuracy. We also found that a deviation of only 1 to 2 days from the optimal date can considerably increase grade-out and reduce farmer's profits. This is an unequivocal demonstration of the utility of these approaches to economic crop optimization and minimization of food losses.
Topics & Concepts
AgricultureProfit (economics)Agricultural engineeringDroneSustainable agriculturePipeline (software)StatisticsComputer scienceMathematicsAgricultural economicsAgricultural scienceEnvironmental scienceEconomicsEngineeringGeographyMicroeconomicsProgramming languageBiologyGeneticsArchaeologyFood Waste Reduction and SustainabilitySmart Agriculture and AI