Monitoring and managing Earth's forests in an informed manner is an important requirement for addressing challenges like biodiversity loss and climate change. While traditional in situ or aerial campaigns for forest assessments provide accurate data for analysis at regional level, scaling them to entire countries and beyond with high temporal resolution is hardly possible. In this work, we propose a method based on deep ensembles that densely estimates forest structure variables at country-scale with 10-meter resolution, using freely available satellite imagery as input. Our method jointly transforms Sentinel-2 optical images and Sentinel-1 synthetic-aperture radar images into maps of five different forest structure variables: 95th height percentile, mean height, density, Gini coefficient, and fractional cover. We train and test our model on reference data from 41 airborne laser scanning missions across Norway and demonstrate that it is able to generalize to unseen test regions, achieving normalized mean absolute errors between 11% and 15%, depending on the variable. Our work is also the first to propose a variant of so-called Bayesian deep learning to densely predict multiple forest structure variables with well-calibrated uncertainty estimates from satellite imagery. The uncertainty information increases the trustworthiness of the model and its suitability for downstream tasks that require reliable confidence estimates as a basis for decision making. We present an extensive set of experiments to validate the accuracy of the predicted maps as well as the quality of the predicted uncertainties. To demonstrate scalability, we provide Norway-wide maps for the five forest structure variables.
翻译:以知情的方式监测和管理地球森林是应对生物多样性丧失和气候变化等挑战的一个重要要求。传统实地或空中森林评估运动提供了准确的数据,供区域一级分析,但很难以高时间分辨率将这些数据推广到整个国家及以外。在这项工作中,我们提出了一个基于深层组合的方法,即利用可自由获取的卫星图像作为投入,以10米分辨率对国家范围内的森林结构变量进行密集估计,以10米分辨率,实现11-15%之间的正常绝对误差。我们的工作也是首先提出所谓的Bayesian深度学习的变式,以密集预测多种森林结构变量,从卫星图像中得出精确的不确定性估计数。我们从41个发射激光扫描任务到挪威各地培训和测试我们的参考数据模型模型,并测试其模型的模型模型的模型性能性,以及整个森林的稳定性。我们为预测性定义的准确性提供了一个可靠的预测性基础。我们为预测性指标的准确性提供了一种可靠的预测性数据,我们为预测性提供了一种可靠的模型的准确性提供了一种预测性基础。