论文标题
在没有可靠的参考数据的情况下检测Sentinel-1数据森林砍伐
Detecting Deforestation from Sentinel-1 Data in the Absence of Reliable Reference Data
论文作者
论文摘要
森林对于我们星球的福祉至关重要。全球的大型和小规模的森林砍伐威胁着我们气候,森林生物多样性以及脆弱生态系统和整个自然栖息地的稳定性。随着对气候变化问题和森林保护的公众兴趣日益增加,对碳补偿,碳足迹评级和环境影响评估的需求很大。最常见的是,森林砍伐图是由诸如Landsat和Modis之类的光学数据创建的。这些地图通常不小于年度间隔,这是由于世界许多地方的持续云覆盖物,尤其是世界上大多数森林生物量集中的热带地区。合成孔径雷达(SAR)可以填补此间隙,因为它穿透了云。在没有可靠的参考证据的情况下,我们提出并评估一种新的森林砍伐检测方法,该方法通常构成最大的实际障碍。该方法在研究领域达到了96.5%的变化检测灵敏度(生产者的准确性),尽管假阳性导致用户的准确性较低,约为75.7%,总平衡精度为90.4%。当将多达20%的噪声添加到参考标签中时,将保持更改的准确性。虽然需要进一步的工作来降低误报率,改善检测延迟并在其他情况下验证此方法,但结果表明,Sentinel-1数据有可能提高全球森林砍伐监测的及时性。
Forests are vital for the wellbeing of our planet. Large and small scale deforestation across the globe is threatening the stability of our climate, forest biodiversity, and therefore the preservation of fragile ecosystems and our natural habitat as a whole. With increasing public interest in climate change issues and forest preservation, a large demand for carbon offsetting, carbon footprint ratings, and environmental impact assessments is emerging. Most often, deforestation maps are created from optical data such as Landsat and MODIS. These maps are not typically available at less than annual intervals due to persistent cloud cover in many parts of the world, especially the tropics where most of the world's forest biomass is concentrated. Synthetic Aperture Radar (SAR) can fill this gap as it penetrates clouds. We propose and evaluate a novel method for deforestation detection in the absence of reliable reference data which often constitutes the largest practical hurdle. This method achieves a change detection sensitivity (producer's accuracy) of 96.5% in the study area, although false positives lead to a lower user's accuracy of about 75.7%, with a total balanced accuracy of 90.4%. The change detection accuracy is maintained when adding up to 20% noise to the reference labels. While further work is required to reduce the false positive rate, improve detection delay, and validate this method in additional circumstances, the results show that Sentinel-1 data have the potential to advance the timeliness of global deforestation monitoring.