Furrow Mapping of Sugarcane Billet Density Using Deep Learning and Object Detection

J. Scott, Andrew Busch
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引用次数: 3

Abstract

Australia's sugar industry is currently undergoing significant hardships, due to global market contractions from COVID-19, increased crop forecasts from larger global producers, and falling oil prices. Current planting practices utilize inefficient mass-flow planting techniques, and no attempt to map the seed using machine vision has been made, to date, in order to understand the underlying problems. This paper investigates the plausibility of creating a labeled sugarcane billet dataset using a readily-available camera positioned beneath a planter and analysing this using a YOLOv3 network. This network resulted in a high mean average precision at intersect over union of 0.5 (mAP50) of 0.852 on test images, and was used to provide planting metrics by generating a furrow map.
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基于深度学习和目标检测的甘蔗坯料密度沟槽映射
由于全球市场因新冠肺炎疫情而萎缩,全球大型生产商的产量预测上调,以及油价下跌,澳大利亚的制糖业目前正面临重大困难。目前的种植实践利用低效的大流量种植技术,并且迄今为止还没有尝试使用机器视觉来绘制种子,以了解潜在的问题。本文研究了使用放置在种植机下方的现成摄像机创建标记甘蔗坯数据集的可行性,并使用YOLOv3网络对其进行分析。该网络在测试图像上获得了0.5 (mAP50) 0.852的高平均相交精度,并通过生成沟图来提供种植指标。
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