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A statistical method for detecting logging-related canopy gaps using high-resolution optical remote sensing

机译:一种利用高分辨率光学遥感技术检测与测井相关的冠层间隙的统计方法

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摘要

In tropical rainforests, the sustainability of selective logging is closely linked to the extent of collateral stand damage. The capacity to measure the extent of such damage is essential for calculating carbon emissions due to forest degradation under the Reducing Emissions from Deforestation and Forest Degradation (REDD+) process. The use of remote sensing to detect canopy gaps in tropical rainforests is an attractive alternative to ground surveys, which are laborious and imprecise. In French Guiana, the detection of logging-related gaps using very high spatial resolution optical satellite images produced by the Systeme Pour I'Observation de la Terre (SPOT) 5 sensor is carried out by Office National des Forets (ONF) (French National Forestry Agency). Gaps are detected using a segmentation method based on computer-assisted photointerpretation. Detection has been automated to improve and accelerate the process. We developed an automatic method, which involves estimating segmentation thresholds using a statistical approach. The principle of the method presented in this article is to model the forest's spectral signature by using a Gaussian distribution and calculate a divergence between that theoretical signature and the image histogram in order to detect gaps that constitute a reduction of forest cover. The segmentation threshold between gap and forest is thus no longer defined in the original radiometric area but as a discrepancy between theoretical distribution and histogram. Computing the divergence to define the threshold made it possible to efficiently automate the detection of all gaps and skid trails with a surface area greater than 100 m~2. The proportion of misclassified points measured during field surveys is 12%, which is a high level of precision. The proportion of misclassified points obtained is 12%. This tool could be used to assess the quality of logging operations or biomass loss in other areas where the forest is undergoing deterioration while still remaining predominant in the landscape.
机译:在热带雨林中,选择性伐木的可持续性与林分附带损害的程度密切相关。测量这种破坏程度的能力对于计算减少森林砍伐和森林退化所致排放量(REDD +)过程中由于森林退化造成的碳排放至关重要。使用遥感技术检测热带雨林中的树冠间隙是费力且不精确的地面调查的一种有吸引力的替代方法。在法属圭亚那,由国家林业局(ONF)(法国国家林业局)使用Systeme Pour I'Observation de la Terre(SPOT)5传感器产生的高空间分辨率光学卫星图像来检测与测井有关的间隙。机构)。使用基于计算机辅助照片解释的分割方法检测间隙。检测已自动进行,以改善和加速过程。我们开发了一种自动方法,其中涉及使用统计方法估算细分阈值。本文介绍的方法的原理是通过使用高斯分布对森林的光谱特征建模,并计算该理论特征和图像直方图之间的差异,以检测构成森林覆盖率减少的间隙。因此,在原始辐射区域不再定义间隙和森林之间的分割阈值,而是将其作为理论分布和直方图之间的差异。通过计算散度以定义阈值,可以有效地自动检测表面积大于100 m〜2的所有间隙和滑轨。在实地调查中测得的错误分类分数所占比例为12%,这是很高的精确度。获得的错误分类分数的比例为12%。该工具可用于评估其他地区的伐木作业质量或生物量损失,在这些地区森林正在退化,但仍然占主要景观。

著录项

  • 来源
    《International journal of remote sensing》 |2013年第2期|700-711|共12页
  • 作者单位

    Office National des Forets (ONF), Reserve de Montabo, 97307 Cayenne, French Guiana;

    NEVANTROPIC, SAS, 97300 Cayenne, French Guiana;

    Office National des Forets (ONF), Reserve de Montabo, 97307 Cayenne, French Guiana;

    CIRAD-ES, UPR 105 Forest Services,34398 Montpellier Cedex, France;

  • 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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