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Potential of Internet street-view images for measuring tree sizes in roadside forests

机译:互联网街道视图图像测量路边森林中的树尺寸

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摘要

Tree size censusing is essential for evaluations of trees and forests, but traditional field surveys are both time- and labor-intensive. Here, we discuss the use of panoramic 360-degree street views available on the Internet for censusing of roadside trees in urban regions. Use of scale-independent, fixed-sized street objects as recalibrating meters in tandem with imagery software enabled street-view images to be used effectively in the remote measurement of diameter at breast height (DBH), tree height, underbranch height, and canopy projection size. Comparison of four independent meters determined that stem limewhite-related meters (used for tree disease and bark-freeze injury control; usually 1.3 in height throughout China) had greater precision than road curb height, lane width, and traffic line width meters. The limewhite meter's precision was slightly lower than those of the meters in combination (i.e., when at least three of the abovementioned meters were used for the same tree measurement), but no statistically significant differences were detected between the limewhite and combined meters (p & 0.05). In contrast, the road curb height, traffic line width, and lane width meters all had significantly lower precision. The highest levels of precision were 92%, 87%, and 80% for DBH, height (tree height and underbranch height), and tree canopy size measurements, respectively. Empirical recalibration of the image-based measurements did not improve data precision with reference to field surveys (p & 0.05). Moreover, similar results were obtained regardless of individual users, and repeatability for DBH measurements (r(2) & 0.92), and maximum differences among individual users were 0.6-1.9 cm for DBH (averaged at 22 cm) and 8-50 cm for underbranch height (mean value at 8 m). Labor costs and time needed for this approach were one-thirtieth to one-tenth those required for field surveys. Thus, the use of street-view images represents a more resourceful approach to assess forest ecological services.
机译:树大小普令对树木和森林的评估至关重要,但传统的田间调查既是时间和劳动密集型。在这里,我们讨论了在互联网上提供的全景360度街头视图,以便在城市地区的路边树上审查。使用规模无关的固定街道对象作为重新校准仪表,其与图像软件的串联,使得在乳房高度(DBH),树高,承受团高度和冠层投射的直径的远程测量中有效地使用的街道视图图像尺寸。 4个独立仪表的比较确定茎肢体相关米(用于树疾病和树皮 - 冻伤控制;通常在中国的高度1.3)比路遏制高度,车道宽度和交通线宽度仪表更大。泥石米米的精度略低于仪表组合的精度(即,当至少有三个上述仪表用于相同的树测量时),但在肢体和组合米之间没有检测到统计学上显着的差异(P&amp 0.05)。相比之下,道路遏制高度,交通线宽度和车道宽度仪均具有显着较低的精度。对于DBH,高度(树高度和欠Branch高度)和树冠尺寸测量的最高精度水平为92%,87%和80%。基于图像的测量的实证重新校准未参考现场调查(P& 0.05)提高数据精度。此外,无论个体使用者如何获得类似的结果,以及DBH测量的可重复性(R(2)& GT; 0.92),并且单个用户之间的最大差异为0.6-1.9厘米的DBH(平均为22厘米)和8- uchbranch高度50厘米(平均值为8米)。这种方法所需的劳动力成本和时间是一个第13岁的田间调查所需的一吨。因此,使用街道视图图像代表了一种更灵能的方法来评估森林生态服务。

著录项

  • 来源
    《Urban Forestry & Urban Greening》 |2018年第2018期|共10页
  • 作者单位

    Chinese Acad Sci Northeast Inst Geog &

    Agroecol Key Lab Wetland Ecol &

    Environm Urban Forests &

    Wetlands Grp Changchun 130102 Jilin Peoples R China;

    Northeast Forestry Univ Key Lab Forest Plant Ecol Harbin 150040 Heilongjiang Peoples R China;

    Northeast Forestry Univ Key Lab Forest Plant Ecol Harbin 150040 Heilongjiang Peoples R China;

    Northeast Forestry Univ Key Lab Forest Plant Ecol Harbin 150040 Heilongjiang Peoples R China;

    Northeast Forestry Univ Key Lab Forest Plant Ecol Harbin 150040 Heilongjiang Peoples R China;

    Northeast Forestry Univ Key Lab Forest Plant Ecol Harbin 150040 Heilongjiang Peoples R China;

    Chinese Acad Sci Northeast Inst Geog &

    Agroecol Key Lab Wetland Ecol &

    Environm Urban Forests &

    Wetlands Grp Changchun 130102 Jilin Peoples R China;

  • 收录信息
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 园艺;
  • 关键词

    Fixed-sized scale-independent meter; Image-based tree size measurement; ImageJ software; Roadside forests; Street-view picture; Tree size census;

    机译:固定规模无关的仪表;基于图像的树尺寸测量;imagej软件;路边森林;街景图片;树大小普查;

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