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StalkNet: A Deep Learning Pipeline for High-Throughput Measurement of Plant Stalk Count and Stalk Width

机译:Stalknet:用于植物秸秆计数和秆宽度的高通量测量的深度学习管道

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Recently, a body of computer vision research has studied the task of high-throughput plant phenotyping (measurement of plant attributes). The goal is to more rapidly and more accurately estimate plant properties as compared to conventional manual methods. In this work, we develop a method to measure two primary yield attributes of interest; stalk count and stalk width that are important for many broadacre annual crops (sorghum, sugarcane, corn, maize for example). Prior work of using convolutional deep neural networks for plant analysis has either focused on object detection or dense image segmentation. In our work, we develop a novel pipeline that accurately extracts both detected object regions and dense semantic segmentation for extracting both stalk counts and stalk width. A ground-robot called the Robotanist is used to deploy a high-resolution stereo imager to capture dense image data of experimental plots of Sorghum plants. We ground-truth validate data extracted using two humans who assess the traits independently and we compare both accuracy and efficiency of human versus robotic measurements. Our method yields R-squared correlation of 0.88 for stalk count and a mean absolute error of 2.77 mm where average stalk width is 14.354 mm. Our approach is 30 times faster for stalk count and 270 times faster for stalk width measurement.
机译:最近,一体的计算机视觉研究已经研究了高通量植物表型的任务(植物属性的测量)。与传统手动方法相比,目标是更快,更准确地估算植物性质。在这项工作中,我们开发了一种测量兴趣的两个主要产量属性的方法;茎秆数量和茎宽度对于许多崇拜年度作物(高粱,甘蔗,玉米,玉米而言是重要的。使用卷积的植物分析的卷积深神经网络的事先工作的重点是对象检测或致密图像分割。在我们的工作中,我们开发了一种新型管道,可以准确地提取检测到的对象区域和致密语义分割,以提取秸秆计数和秆宽度。称为机器人主义的地面机器人用于部署高分辨率立体图像,以捕获高粱植物实验图的密集图像数据。我们实际验证使用两个人独立评估特征的人提取数据,我们比较人类与机器人测量的准确性和效率。我们的方法产生0.88的R形相关性,对于茎次数,平均绝对误差为2.77mm,平均茎宽为14.354mm。我们的方法对于茎距测量速度快30倍,对于茎宽度测量速度更快270倍。

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