计算机科学
激光雷达
概率逻辑
航程(航空)
遥感
回归
天蓬
深度学习
机器学习
人工智能
环境科学
气象学
统计
数学
地理
材料科学
考古
复合材料
作者
Nico Lang,Nikolai Kalischek,John Armston,Konrad Schindler,Ralph Dubayah,Jan Dirk Wegner
标识
DOI:10.1016/j.rse.2021.112760
摘要
NASA's Global Ecosystem Dynamics Investigation (GEDI) is a key climate mission whose goal is to advance our understanding of the role of forests in the global carbon cycle. While GEDI is the first space-based LIDAR explicitly optimized to measure vertical forest structure predictive of aboveground biomass, the accurate interpretation of this vast amount of waveform data across the broad range of observational and environmental conditions is challenging. Here, we present a novel supervised machine learning approach to interpret GEDI waveforms and regress canopy top height globally. We propose a probabilistic deep learning approach based on an ensemble of deep convolutional neural networks(CNN) to avoid the explicit modelling of unknown effects, such as atmospheric noise. The model learns to extract robust features that generalize to unseen geographical regions and, in addition, yields reliable estimates of predictive uncertainty. Ultimately, the global canopy top height estimates produced by our model have an expected RMSE of 2.7 m with low bias.
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