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A comparison of three methods for automatic tree crown detection and delineation from high spatial resolution imagery

机译:三种自动树冠检测和高空间分辨率影像描绘方法的比较

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摘要

This article compares the performance of three algorithms representative of published methods for tree crown detection and delineation from high spatial resolution imagery, and demonstrates a standardized accuracy assessment framework. The algorithms - watershed segmentation, region growing and valley-following -were tested on softwood and hardwood sites using Emerge natural colour vertical aerial imagery with 60 cm ground sampled distance and QuickBird panchromatic imagery with an 11° look angle. The evaluation considered both plot-level and individual tree crown detection and delineation results. The study shows that while all three methods reasonably delineate crowns in the softwood stand on the Emerge image, region growing provided the highest accuracies, with producer's and user's accuracy for tree detection reaching 70% and root mean square error for crown diameter estimation of 15%. Crown detection accuracies were lower on the QuickBird image. No algorithm proved accurate for the hardwood stand on either image set (both producer's and user's accuracies < 30%).
机译:本文比较了代表已发表方法的三种算法的性能,这些算法用于从高空间分辨率图像中进行树冠检测和轮廓描绘,并演示了标准化的准确性评估框架。使用在60厘米地面采样距离处的Emerge天然彩色垂直航空影像和11°视角的QuickBird全色影像,在软木和硬木场地上测试了算法(分水岭分割,区域生长和山谷跟随)。评估考虑了地块级别和单个树冠的检测和描绘结果。研究表明,虽然这三种方法均能在Emerge图像上合理地描绘出软木林冠,但区域生长提供了最高的精度,生产者和使用者的树木检测准确度达到70%,树冠直径估计的均方根误差为15% 。在QuickBird图像上,牙冠检测精度较低。在这两种图像集上,没有一种算法证明对硬木林木是准确的(生产者和使用者的准确性均<30%)。

著录项

  • 来源
    《International journal of remote sensing》 |2011年第14期|p.3625-3647|共23页
  • 作者单位

    Department of Environmental Resources Engineering, State University of New York College of Environmental Science and Forestry, 1 Forestry Dr., Syracuse, New York,USA;

    Department of Environmental Resources Engineering, State University of New York College of Environmental Science and Forestry, 1 Forestry Dr., Syracuse, New York,USA;

  • 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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