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首页> 外文期刊>Remote Sensing of Environment: An Interdisciplinary Journal >Trajectory-based change detection for automated characterization of forest disturbance dynamics
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Trajectory-based change detection for automated characterization of forest disturbance dynamics

机译:基于轨迹的变化检测可自动表征森林扰动动态

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Satellite sensors are well suited to monitoring changes on the Earth's surface through provision of consistent and repeatable measurements at a spatial scale appropriate for many processes causing change on the land surface. Here, we describe and test a new conceptual approach to change detection of forests using a dense temporal stack of Landsat Thematic Mapper (TM) imagery. The central premise of the method is the recognition that many phenomena associated with changes in land cover have distinctive temporal progressions both before and after the change event, and that these lead to characteristic temporal signatures in spectral space. Rather than search for single change events between two dates of imagery, we instead search for these idealized signatures in the entire temporal trajectory of spectral values. This trajectory-based change detection is automated, requires no screening of non-forest area, and requires no metric-specific threshold development. Moreover, the method simultaneously provides estimates of discontinuous phenomena (disturbance date and intensity) as well as continuous phenomena (post-disturbance regeneration). We applied the method to a stack of 18 Landsat TM images for the 20-year period from 1984 to 2004. When compared with direct interpreter delineation of disturbance events, the automated method accurately labeled year of disturbance with 90% overall accuracy in clear-cuts and with 77% accuracy in partial-cuts (thinnings). The primary source of error in the method was misregistration of images in the stack, suggesting that higher accuracies are possible with better registration. (c) 2007 Elsevier Inc. All rights reserved.
机译:卫星传感器非常适合通过在空间尺度上提供一致且可重复的测量结果来监视地球表面的变化,这些测量结果适用于导致陆地表面变化的许多过程。在这里,我们描述并测试了一种新的概念方法,该方法使用Landsat Thematic Mapper(TM)图像的密集时间堆栈来对森林进行变化检测。该方法的中心前提是认识到,与土地覆盖变化相关的许多现象在变化事件之前和之后均具有独特的时间进展,并且这些现象导致光谱空间中的特征性时间特征。我们不是在图像的两个日期之间搜索单个更改事件,而是在光谱值的整个时间轨迹中搜索这些理想化的签名。这种基于轨迹的变化检测是自动化的,不需要筛选非林区,也不需要制定特定于度量的阈值。此外,该方法同时提供了不连续现象(扰动日期和强度)以及连续现象(扰动后再生)的估计。我们将该方法应用于从1984年到2004年的20年期间的18张Landsat TM图像的堆栈中。与直接解释器描述扰动事件相比,该自动方法以清晰的整体精度准确地标记了扰动年份,整体准确度达到90%并且局部切割(细化)的准确性为77%。该方法的主要错误来源是堆栈中图像的配准错误,这表明更高的精确度和更好的配准是可能的。 (c)2007 Elsevier Inc.保留所有权利。

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