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Use of Remote Imagery and Object-based Image Methods to Count Plants in an Open-field Container Nursery.

机译:使用远程图像和基于对象的图像方法对露天容器育苗场中的植物进行计数。

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摘要

In general, the nursery industry lacks an automated inventory control system. Object-based image analysis (OBIA) software and aerial images could be used to count plants in nurseries. The objectives of this research were: 1) to evaluate the effect of an unmanned aerial vehicle (UAV) flight altitude and plant canopy separation of container-grown plants on count accuracy using aerial images and 2) to evaluate the effect of plant canopy shape, presence of flowers, and plant status (living and dead) on counting accuracy of container-grown plants using remote sensing images. Images were analyzed using Feature AnalystRTM (FA) and an algorithm trained using MATLABRTM. Total count error, false positives and unidentified plants were recorded from output images using FA; only total count error was reported for the MATLAB algorithm. For objective 1, images were taken at 6, 12 and 22 m above the ground using a UAV. Plants were placed on black fabric and gravel, and spaced as follows: 5 cm between canopy edges, canopy edges touching, and 5 cm of canopy edge overlap. In general, when both methods were considered, total count error was smaller [ranging from -5 (undercount) to 4 (over count)] when plants were fully separated with the exception of images taken at 22 m. FA showed a smaller total count error (-2) than MATLAB (-5) when plants were placed on black fabric than those placed on gravel. For objective 2, the plan was to continue using the UAV, however, due to the unexpected disruption of the GPS-based navigation by heightened solar flare activity in 2013, a boom lift that could provide images on a more reliable basis was used. When images obtained using a boom lift were analyzed using FA there was no difference between variables measured when an algorithm trained with an image displaying regular or irregular plant canopy shape was applied to images displaying both plant canopy shapes even though the canopy shape of 'Sea Green' juniper is less compact than 'Plumosa Compacta'. There was a significant difference in all variables measured between images of flowering and non-flowering plants, when non-flowering 'samples' were used to train the counting algorithm and analyzed with FA. No dead plants were counted as living and vice versa, when data were analyzed using FA. When the algorithm trained in MATLAB was applied, there was no significant difference in total count errors when plant canopy shape and presence of flowers were evaluated. Based on the combined results from these separate experiments, FA and MATLAB algorithms appear to be fairly robust when used to count container-grown plants from images taken at the heights specified.
机译:通常,苗圃行业缺乏自动化的库存控制系统。基于对象的图像分析(OBIA)软件和航拍图像可用于对苗圃中的植物进行计数。这项研究的目的是:1)使用航空图像评估无人飞行器(UAV)飞行高度和容器生长植物的植物冠层分离对计数准确性的影响; 2)评估植物冠层形状的影响,花朵的存在以及植物状态(活着的和枯死的),这些植物使用遥感图像计算容器生长的植物的准确性。使用Feature AnalystRTM(FA)和使用MATLABRTM训练的算法对图像进行分析。使用FA从输出图像中记录总计数误差,假阳性和未鉴定植物;对于MATLAB算法,仅报告了总计数错误。对于物镜1,使用无人机在地面上方6、12和22 m处拍摄图像。将植物放置在黑色织物和砾石上,并按如下间隔:冠层边缘之间5厘米,冠层边缘接触,冠层边缘重叠5厘米。通常,将两种方法都考虑在内时,除在22 m处拍摄的图像完全分离外,总计数误差较小[范围从-5(计数不足)到4(计数过量)]。当植物放在黑色织物上时,FA的总计数误差(-2)比MATLAB(-5)小,而MATLAB(-5)小于砾石。对于目标2,计划继续使用无人机,但是,由于2013年太阳耀斑活动增加,GPS导航意外中断,因此使用了可以提供更可靠图像的动臂升降机。当使用FA对使用动臂提升机获得的图像进行分析时,即使将显示为“ Sea Green”的树冠形状的算法应用显示有规则或不规则植物冠层形状的图像训练的算法应用于显示两种植物冠层形状的图像,所测量的变量之间也没有差异杜松比“ Plumosa Compacta”紧凑。当使用非开花“样本”训练计数算法并用FA分析时,在开花和非开花植物的图像之间测量的所有变量之间存在显着差异。使用FA分析数据时,没有死植物被认为是有生命的,反之亦然。当应用在MATLAB中训练的算法时,在评估植物冠层形状和花朵的存在时,总计数误差没有显着差异。基于这些单独实验的组合结果,当用于从指定高度拍摄的图像中对容器种植的植物进行计数时,FA和MATLAB算法显得相当健壮。

著录项

  • 作者

    Leiva Lopez, Josue Nahun.;

  • 作者单位

    University of Arkansas.;

  • 授予单位 University of Arkansas.;
  • 学科 Horticulture.;Remote sensing.
  • 学位 M.S.
  • 年度 2014
  • 页码 123 p.
  • 总页数 123
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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