Gaussian Processes (GPs) has experienced tremendous success in geoscience in general and for bio-geophysical parameter retrieval in the last years. GPs constitute a solid Bayesian framework to formulate many function approximation problems consistently. This paper reviews the main theoretical GP developments in the field. We review new algorithms that respect the signal and noise characteristics, that provide feature rankings automatically, and that allow applicability of associated uncertainty intervals to transport GP models in space and time. All these developments are illustrated in the field of geoscience and remote sensing at a local and global scales through a set of illustrative examples.
翻译:Gaussian processes(GPs)在过去几年里在地球科学和生物地球物理参数检索方面取得了巨大成功,GPs构成了一个牢固的巴伊西亚框架,可以持续地提出许多功能近似问题。本文回顾了该领域的主要理论GP发展动态。我们审查了尊重信号和噪音特点的新算法,这些算法自动提供特征排位,并允许相关不确定性间隔的适用性,以便在空间和时间上运输GP模型。所有这些发展都通过一系列示例,在地方和全球范围内通过地球科学和遥感领域加以说明。