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A simple method for detection and counting of oil palm trees using high-resolution multispectral satellite imagery

机译:一种使用高分辨率多光谱卫星图像检测和计数油棕树的简单方法

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摘要

In the past, oil palm density has been determined by manually counting trees every year in oil palm plantations. The measurement of density provides important data related to palm productivity, fertilizer needed, weed control costs in a circle around each tree, labourers needed, and needs for other activities. Manual counting requires many workers and has potential problems related to accuracy. Remote sensing provides a potential approach for counting oil palm trees. The main objective of this study is to build a robust and user-friendly method that will allow oil palm managers to count oil palm trees using a remote sensing technique. The oil palm trees analysed in this study have different ages and densities. QuickBird imagery was applied with the six pansharpening methods and was compared with panchromatic QuickBird imagery. The black and white imagery from a false colour composite of pansharpening imagery was processed in three ways: (1) oil palm tree detection, (2) delineation of the oil palm area using the red band, and (3) counting oil palm trees and accuracy assessment. For oil palm detection, we used several filters that contained a Sobel edge detector; texture analysis co-occurrence; and dilate, erode, high-pass, and opening filters. The results of this study improved upon the accuracy of several previous research studies that had an accuracy of about 90-95%. The results in this study show (1) modified intensity-hue-saturation (IHS) resolution merge is suitable for 16-year-old oil palm trees and have rather high density with 100% accuracy; (2) colour normalized (Brovey) is suitable for 21-year-old oil palm trees and have low density with 99.5% accuracy; (3) subtractive resolution merge is suitable for 15- and 18-year-old oil palm trees and have a rather high density with 99.8% accuracy; (4) PC spectral sharpening with 99.3% accuracy is suitable for 10-year-old oil palm trees and have low density; and (5) for all study object conditions, colour normalized (Brovey) and wavelet resolution merge are two pansharpening methods that are suitable for oil palm tree extraction and counting with 98.9% and 98.4% accuracy, respectively.
机译:过去,油棕密度是通过每年对油棕人工林中的树木进行手动计数来确定的。密度的测量提供了与棕榈生产力,所需肥料,每棵树围成一圈的杂草控制成本,所需劳动力以及其他活动需求有关的重要数据。手动计数需要许多工人,并且存在与准确性有关的潜在问题。遥感为计算油棕树提供了一种潜在的方法。这项研究的主要目的是建立一种健壮且用户友好的方法,该方法将使油棕管理人员能够使用遥感技术对油棕树进行计数。本研究中分析的油棕树具有不同的年龄和密度。将QuickBird影像应用了六种全锐化方法,并与全色QuickBird影像进行了比较。来自泛锐化图像的伪彩色合成的黑白图像以三种方式处理:(1)油棕树检测,(2)使用红色带划定油棕树区域,以及(3)计算油棕树和准确性评估。对于油棕的检测,我们使用了包含Sobel边缘检测器的几个过滤器。纹理分析共现;并扩张,腐蚀,高通和开放式滤波器。这项研究的结果比以前的几项研究的准确性有所提高,这些研究的准确性约为90-95%。这项研究的结果表明:(1)改进的强度-色相-饱和度(IHS)分辨率合并适用于16岁的油棕树,并且密度很高,准确度为100%; (2)色彩归一化(Brovey)适用于21岁的油棕树,密度低,准确率99.5%; (3)减法分辨率合并适用于15和18岁的油棕树,密度较高,准确度达99.8%; (4)PC光谱锐化精度为99.3%,适合10年以上的油棕树,密度低。 (5)对于所有研究对象条件,颜色归一化(Brovey)和小波分辨率合并是两种泛锐化方法,分别适用于油棕树的提取和计数,其准确度分别为98.9%和98.4%。

著录项

  • 来源
    《International journal of remote sensing》 |2016年第22期|5122-5134|共13页
  • 作者单位

    Indonesian Oil Palm Res Inst, Medan, Indonesia|Hokkaido Univ, Grad Sch Agr, Sapporo, Hokkaido, Japan;

    Hokkaido Univ, Res Fac Agr, Sapporo, Hokkaido, Japan;

    Hokkaido Univ, Res Fac Agr, Sapporo, Hokkaido, Japan;

  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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