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A machine learning approach to map tropical selective logging

机译:映射热带选择性伐木的机器学习方法

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Hundreds of millions of hectares of tropical forest have been selectively logged, either legally or illegally. Methods for detecting and monitoring tropical selective logging using satellite data are at an early stage, with current methods only able to detect more intensive timber harvest ( 20 m(3) ha(-1)). The spatial resolution of widely available datasets, like Landsat, have previously been considered too coarse to measure the subtle changes in forests associated with less intensive selective logging, yet most present-day logging is at low intensity. We utilized a detailed selective logging dataset from over 11,000 ha of forest in Rondonia, southern Brazilian Amazon, to develop a Random Forest machine-learning algorithm for detecting low-intensity selective logging ( 15 m(3) ha(-1)) We show that Landsat imagery acquired before the cessation of logging activities (i.e. the final cloud-free image of the dry season during logging) was better at detecting selective logging than imagery acquired at the start of the following dry season (i.e. the first cloud-free image of the next dry season). Within our study area the detection rate of logged pixels was approximately 90% (with roughly 20% commission and 8% omission error rates) and approximately 40% of the area inside low-intensity selective logging tracts were labelled as logged. Application of the algorithm to 6152 ha of selectively logged forest at a second site in Park northeast Brazilian Amazon, resulted in the detection of 2316 ha (38%) of selective logging (with 20% commission and 7% omission error rates). This suggests that our method can detect low-intensity selective logging across large areas of the Amazon. It is thus an important step forward in developing systems for detecting selective logging pan-tropically with freely available data sets, and has key implications for monitoring logging and implementing carbon-based payments for ecosystem service schemes.
机译:在法律或非法的情况下,已经有选择地记录了数亿公顷的热带森林。使用卫星数据检测和监测热带选择性测井的方法在早期阶段,目前的方法仅能够检测更强化的木材收获(& 20 m(3)ha(-1))。广泛可用数据集的空间分辨率,如Landsat,先前已被认为太粗糙,以测量与较小的选择性伐木相关的森林中的微妙变化,但大多数现有日期测井处于低强度。我们利用来自巴西南部南部的rondonia超过11,000公顷的森林的详细选择性测井数据集,开发了一种用于检测低强度选择性测井的随机林机器学习算法(& 15 m(3)ha(-1))我们展示了在伐木活动停止之前获得的Landsat图像(即测井期间干燥季的最终无云图像)在检测到比在下列干燥季开始时所获得的图像(即第一云 - 下一个干燥季节的免费形象)。在我们的研究区域内,记录像素的检出率约为90%(大约20%的佣金和8%省略误差率),低强度选择性伐木道内的大约40%的区域被标记为记录。该算法在巴西亚马逊公园园区第二站点的6152公顷的应用,导致检测2316公顷(38%)的选择性测井(20%的委员会和7%遗漏误差率)。这表明我们的方法可以在亚马逊的大面积上检测低强度选择性测井。因此,它是一种在开发系统中进行选择性测井泛的系统的重要一步,其与自由可用的数据集,并且对监视日志记录和实现基于碳的支付的关键意义是用于生态系统服务方案。

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