Randomized kernels for large scale Earth observation applications
Adri\'an P\'erez-Suay, Julia Amor\'os-L\'opez, Luis G\'omez-Chova,, Valero Laparra, Jordi Mu\~noz-Mar\'i, Gustau Camps-Valls

TL;DR
This paper presents a fast, scalable kernel method using random projections for large-scale Earth observation data analysis, enabling efficient retrieval and classification with high-dimensional datasets.
Contribution
It introduces a novel approximation of kernel matrices via random Fourier features, significantly reducing computational costs for large-scale remote sensing applications.
Findings
Enables kernel regression on millions of data points.
Reduces memory and processing costs substantially.
Proves effective in atmospheric parameter retrieval and image classification.
Abstract
Dealing with land cover classification of the new image sources has also turned to be a complex problem requiring large amount of memory and processing time. In order to cope with these problems, statistical learning has greatly helped in the last years to develop statistical retrieval and classification models that can ingest large amounts of Earth observation data. 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 or the classification of high spatial-spectral-temporal resolution data. This paper introduces an efficient kernel method for fast statistical retrieval of bio-geo-physical parameters and image classification…
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Taxonomy
TopicsRemote-Sensing Image Classification · Remote Sensing in Agriculture · Urban Heat Island Mitigation
