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Near real-time monitoring of tropical forest disturbance: New algorithms and assessment framework

机译:热带森林障碍的近实时监测:新算法和评估框架

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Near real-time monitoring systems of forest disturbance are essential to reduce illegal logging and global deforestation, but the assessment of their performance varies greatly and rarely adheres to recommended assessment practices. Current assessment protocols recommended in the published literature focus on sample-based estimation of area and accuracy of features in remote sensing-based maps, which is less relevant for assessing the performance of near real-time monitoring systems. Rather than area bias and accuracy of mapped features, the objective of near real-time monitoring is fast detection of forest disturbance events. Here we present a new assessment framework as well as two new algorithms for near real-time monitoring of tropical forest disturbance. The first algorithm (NRT-CCDC) fits time series models based on MODIS data to predict future observations. Detections of forest disturbance are labeled as "low-probability", "high-probability", and "confirmed" based on the number of consecutive observations that deviate substantially from the prediction. The second algorithm (Fusion2) predicts MODIS observations at a high temporal frequency by building a model based on a time series of Landsat observations. Fusion2 utilizes daily MODIS observations from both Terra and Aqua to achieve rapid detection of disturbance events. A framework for assessing the performance of near real-time monitoring is presented that focuses on the timing and minimum detectable size of forest disturbance events while still being based on probability sampling and design-based inference. Central to the framework is a new metric we refer to as the "alert-lag relationship", which characterizes the frequency of omitted disturbance events as a function of the time lag between the dates of disturbance and detection. When applied to three different near-real monitoring systems representing three levels of operational readiness (Fusion2, NRT-CCDC and Terra-i), we found that Fusion2 achieved an
机译:森林骚扰的近期实时监测系统对于减少非法伐木和全球砍伐森林至关重要,但对其性能的评估大大变化,很少遵守建议的评估实践。公布的文献中推荐的当前评估协议专注于基于样本的面积估计和基于遥感地图中的功能的准确性,这对于评估近实时监控系统的性能不太重要。而不是映射特征的区域偏见和准确性,近实时监测的目的是快速检测森林障碍事件。在这里,我们提出了一个新的评估框架以及两种新的算法,用于热带森林障碍的近实时监测。第一算法(NRT-CCDC)基于MODIS数据适合时间序列模型,以预测未来的观察。森林扰动的检测标记为“低概率”,“高概率”和“确认”的基于基本上从预测偏离的连续观察的数量。第二算法(Fusion2)通过基于Landsat观测的时间序列建立模型来预测高时间频率的MODIS观察。 Fusion2利用来自Terra和Aqua的每日Modis观测,以实现快速检测干扰事件。提出了一种评估近实时监测性能的框架,其侧重于森林扰动事件的定时和最小可检测大小,同时仍然基于概率采样和基于设计的推断。框架的核心是一个新的指标,我们将其称为“警报滞后关系”,其表征省略干扰事件的频率作为干扰和检测的日期之间的时间延迟的函数。当应用于三个不同的近实际监测系统时,代表三个操作准备就绪(Fusion2,NRT-CCDC和Terra-i),我们发现融合2实现了一个

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