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A Comparison of Novel Optical Remote Sensing-Based Technologies for Forest-Cover/Change Monitoring

机译:新型基于光学遥感的森林覆盖/变化监测技术比较

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Remote sensing is gaining considerable traction in forest monitoring efforts, with the Carnegie Landsat Analysis System lite (CLASlite) software package and the Global Forest Change dataset (GFCD) being two of the most recently developed optical remote sensing-based tools for analysing forest cover and change. Due to the relatively nascent state of these technologies, their abilities to classify land cover and monitor forest dynamics have yet to be evaluated against more established approaches. Here, we compared maps of forest cover and change produced by the more traditional supervised classification approach with those produced by CLASlite and the GFCD, working with imagery collected over Sierra Leone, West Africa. CLASlite maps of forest change from 2001–2007 and 2007–2014 exhibited the highest overall accuracies (79.1% and 89.6%, respectively) and, importantly, the greatest capacity to discriminate natural from planted mature forest growth. CLASlite’s comparative advantage likely derived from its more robust sub-pixel classification logic and numerous user-defined parameters, which resulted in classified products with greater site relevance than those of the two other classification approaches. In light of today’s continuously growing body of analytical toolsets for remotely sensed data, our study importantly elucidates the ways in which methodological processes and limitations inherent in certain classification tools can impact the maps they are capable of producing, and demonstrates the need to understand and weigh such factors before any one tool is selected for a given application.
机译:遥感在森林监测工作中获得了很大的关注,卡内基Landsat分析系统lite(CLASlite)软件包和全球森林变化数据集(GFCD)是最近开发的两种基于光学遥感的森林覆盖率分析工具。更改。由于这些技术还处于起步阶段,其分类土地覆盖和监测森林动态的能力尚未根据更成熟的方法进行评估。在这里,我们将西非塞拉利昂地区收集的图像与由CLASlite和GFCD生成的森林覆盖图和变化图进行了比较,这些方法由传统的监督分类方法生成。 CLASlite 2001-2007年和2007-2014年森林变化图显示了最高的总体准确度(分别为79.1%和89.6%),重要的是,最大的区分自然和人工种植的成熟森林的能力。 CLASlite的比较优势可能来自其更强大的子像素分类逻辑和众多用户定义的参数,这导致与其他两种分类方法相比,具有更高的网站相关性的分类产品。鉴于当今用于遥感数据的分析工具集的数量不断增长,我们的研究重要地阐明了某些分类工具固有的方法过程和局限性可能影响其产生能力的地图的方式,并说明了理解和衡量的必要性在为给定应用选择任何一种工具之前,这些因素都是如此。

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