Abstract

Kernel methods constitute a family of powerful machine learning algorithms, which have found wide use in remote sensing and geosciences. However, kernel methods are still not widely adopted because of the high computational cost when dealing with large scale problems, such as the inversion of radiative transfer models. This paper introduces the method of random kitchen sinks (RKS) for fast statistical retrieval of bio-geo-physical parameters. The RKS method allows to approximate a kernel matrix with a set of random bases sampled from the Fourier domain. We extend their use to other bases, such as wavelets, stumps, and Walsh expansions. We show that kernel regression is now possible for datasets with millions of examples and high dimensionality. Examples on atmospheric parameter retrieval from infrared sounders and biophysical parameter retrieval by inverting PROSAIL radiative transfer models with simulated Sentinel-2 data show the effectiveness of the technique.

Keywords:
Kernel (algebra) Computer science Curse of dimensionality Kernel method Radiative transfer Inversion (geology) Variable kernel density estimation Random forest Scale (ratio) Algorithm Remote sensing Kernel embedding of distributions Support vector machine Pattern recognition (psychology) Artificial intelligence Mathematics Geology Geography Discrete mathematics

Metrics

13
Cited By
1.18
FWCI (Field Weighted Citation Impact)
22
Refs
0.84
Citation Normalized Percentile
Is in top 1%
Is in top 10%

Citation History

Topics

Remote-Sensing Image Classification
Physical Sciences →  Engineering →  Media Technology
Remote Sensing in Agriculture
Physical Sciences →  Environmental Science →  Ecology
Cryospheric studies and observations
Physical Sciences →  Earth and Planetary Sciences →  Atmospheric Science

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