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Near Real-Time Monitoring of Forest Disturbance: A Multi-Sensor Remote Sensing Approach and Assessment Framework

机译:森林扰动的近实时监测:一种多传感器遥感方法和评估框架

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摘要

Fast and accurate monitoring of tropical forest disturbance is essential for understanding current patterns of deforestation as well as helping eliminate illegal logging. This dissertation explores the use of data from different satellites for near real-time monitoring of forest disturbance in tropical forests, including: development of new monitoring methods; development of new assessment methods; and assessment of the performance and operational readiness of existing methods.;Current methods for accuracy assessment of remote sensing products do not address the priority of near real-time monitoring of detecting disturbance events as early as possible. I introduce a new assessment framework for near real-time products that focuses on the timing and the minimum detectable size of disturbance events. The new framework reveals the relationship between change detection accuracy and the time needed to identify events.;In regions that are frequently cloudy, near real-time monitoring using data from a single sensor is difficult. This study extends the work by Xin et al. (2013) and develops a new time series method (Fusion2) based on fusion of Landsat and MODIS (Moderate Resolution Imaging Spectroradiometer) data. Results of three test sites in the Amazon Basin show that Fusion2 can detect 44.4% of the forest disturbance within 13 clear observations (82 days) after the initial disturbance. The smallest event detected by Fusion2 is 6.5 ha. Also, Fusion2 detects disturbance faster and has less commission error than more conventional methods.;In a comparison of coarse resolution sensors, MODIS Terra and Aqua combined provides faster and more accurate detection of disturbance events than VIIRS (Visible Infrared Imaging Radiometer Suite) and MODIS single sensor data. The performance of near real-time monitoring using VIIRS is slightly worse than MODIS Terra but significantly better than MODIS Aqua.;New monitoring methods developed in this dissertation provide forest protection organizations the capacity to monitor illegal logging events promptly. In the future, combining two Landsat and two Sentinel-2 satellites will provide global coverage at 30 m resolution every 4 days, and routine monitoring may be possible at high resolution. The methods and assessment framework developed in this dissertation are adaptable to newly available datasets.
机译:快速准确地监视热带森林扰动对于了解当前的森林砍伐模式以及帮助消除非法砍伐至关重要。本文探讨了利用来自不同卫星的数据对热带森林中森林扰动进行近实时监测的方法,包括:开发新的监测方法;开发新的评估方法;现有方法对遥感产品准确性的评估并没有解决尽早监测扰动事件的近实时监视的优先问题。我为近实时产品介绍了一个新的评估框架,该框架着重于干扰事件的发生时间和最小可检测大小。新的框架揭示了变化检测精度与识别事件所需时间之间的关系。在经常多云的地区,很难使用单个传感器的数据进行近实时监控。这项研究扩展了Xin等人的工作。 (2013),并基于Landsat和MODIS(中等分辨率成像光谱仪)数据的融合,开发了一种新的时间序列方法(Fusion2)。亚马逊盆地三个测试点的结果表明,Fusion2可以在初始干扰后的13个清晰观测(82天)内检测到44.4%的森林干扰。 Fusion2检测到的最小事件为6.5公顷。此外,与传统方法相比,Fusion2能够更快地检测到干扰,并且调试错误更少。相比粗分辨率传感器,与VIIRS(可见红外成像辐射仪套件)和MODIS相比,MODIS Terra和Aqua组合提供了更快,更准确的干扰事件检测。单个传感器数据。使用VIIRS进行近实时监测的性能比MODIS Terra稍差,但比MODIS Aqua明显好。本文所开发的新监测方法为森林保护组织提供了及时监测非法采伐事件的能力。将来,将两颗Landsat卫星和两颗Sentinel-2卫星组合在一起将以每4天30 m的分辨率提供全球覆盖,并且可能可以进行高分辨率的例行监视。本文开发的方法和评估框架适用于新的可用数据集。

著录项

  • 作者

    Tang, Xiaojing.;

  • 作者单位

    Boston University.;

  • 授予单位 Boston University.;
  • 学科 Remote sensing.;Environmental science.;Geography.
  • 学位 Ph.D.
  • 年度 2018
  • 页码 148 p.
  • 总页数 148
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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