» Articles » PMID: 36082106

Green LAI Mapping and Cloud Gap-Filling Using Gaussian Process Regression in Google Earth Engine

Overview
Date 2022 Sep 9
PMID 36082106
Authors
Affiliations
Soon will be listed here.
Abstract

For the last decade, Gaussian process regression (GPR) proved to be a competitive machine learning regression algorithm for Earth observation applications, with attractive unique properties such as band relevance ranking and uncertainty estimates. More recently, GPR also proved to be a proficient time series processor to fill up gaps in optical imagery, typically due to cloud cover. This makes GPR perfectly suited for large-scale spatiotemporal processing of satellite imageries into cloud-free products of biophysical variables. With the advent of the Google Earth Engine (GEE) cloud platform, new opportunities emerged to process local-to-planetary scale satellite data using advanced machine learning techniques and convert them into gap-filled vegetation properties products. However, GPR is not yet part of the GEE ecosystem. To circumvent this limitation, this work proposes a general adaptation of GPR formulation to parallel processing framework and its integration into GEE. To demonstrate the functioning and utility of the developed workflow, a GPR model predicting green leaf area index (LAI ) from Sentinel-2 imagery was imported. Although by running this GPR model into GEE any corner of the world can be mapped into LAI at a resolution of 20 m, here we show some demonstration cases over western Europe with zoom-ins over Spain. Thanks to the computational power of GEE, the mapping takes place on-the-fly. Additionally, a GPR-based gap filling strategy based on pre-optimized kernel hyperparameters is also put forward for the generation of multi-orbit cloud-free LAI maps with an unprecedented level of detail, and the extraction of regularly-sampled LAI time series at a pixel level. The ability to plugin a locally-trained GPR model into the GEE framework and its instant processing opens up a new paradigm of remote sensing image processing.

Citing Articles

Quantifying Irrigated Winter Wheat LAI in Argentina Using Multiple Sentinel-1 Incidence Angles.

Caballero G, Pezzola A, Winschel C, Casella A, Angonova P, Orden L Remote Sens (Basel). 2023; 14(22):5867.

PMID: 36644377 PMC: 7614051. DOI: 10.3390/rs14225867.


Retrieval of carbon content and biomass from hyperspectral imagery over cultivated areas.

Wocher M, Berger K, Verrelst J, Hank T ISPRS J Photogramm Remote Sens. 2023; 193:104-114.

PMID: 36643957 PMC: 7614045. DOI: 10.1016/j.isprsjprs.2022.09.003.


Mapping landscape canopy nitrogen content from space using PRISMA data.

Verrelst J, Rivera-Caicedo J, Reyes-Munoz P, Morata M, Amin E, Tagliabue G ISPRS J Photogramm Remote Sens. 2022; 178:382-395.

PMID: 36203652 PMC: 7613373. DOI: 10.1016/j.isprsjprs.2021.06.017.


Seasonal Mapping of Irrigated Winter Wheat Traits in Argentina with a Hybrid Retrieval Workflow Using Sentinel-2 Imagery.

Caballero G, Pezzola A, Winschel C, Casella A, Angonova P, Rivera-Caicedo J Remote Sens (Basel). 2022; 14(18):4531.

PMID: 36186714 PMC: 7613660. DOI: 10.3390/rs14184531.


Hybrid retrieval of crop traits from multi-temporal PRISMA hyperspectral imagery.

Tagliabue G, Boschetti M, Bramati G, Candiani G, Colombo R, Nutini F ISPRS J Photogramm Remote Sens. 2022; 187:362-377.

PMID: 36093126 PMC: 7613384. DOI: 10.1016/j.isprsjprs.2022.03.014.


References
1.
Wua Q, Lane C, Li X, Zhao K, Zhou Y, Clinton N . Integrating LiDAR data and multi-temporal aerial imagery to map wetland inundation dynamics using Google Earth Engine. Remote Sens Environ. 2021; 228:1-13. PMC: 7995247. DOI: 10.1016/j.rse.2019.04.015. View

2.
Moore C, Chua A, Berry C, Gair J . Fast methods for training Gaussian processes on large datasets. R Soc Open Sci. 2016; 3(5):160125. PMC: 4892455. DOI: 10.1098/rsos.160125. View

3.
Zhang X, Zhang Q . Monitoring interannual variation in global crop yield using long-term AVHRR and MODIS observations. ISPRS J Photogramm Remote Sens. 2020; 114:191-205. PMC: 7380100. DOI: 10.1016/j.isprsjprs.2016.02.010. View

4.
Weiss D, Atkinson P, Bhatt S, Mappin B, Hay S, Gething P . An effective approach for gap-filling continental scale remotely sensed time-series. ISPRS J Photogramm Remote Sens. 2015; 98:106-118. PMC: 4308023. DOI: 10.1016/j.isprsjprs.2014.10.001. View

5.
Belda S, Pipia L, Morcillo-Pallares P, Rivera-Caicedo J, Amin E, De Grave C . DATimeS: A machine learning time series GUI toolbox for gap-filling and vegetation phenology trends detection. Environ Model Softw. 2022; 127. PMC: 7613385. DOI: 10.1016/j.envsoft.2020.104666. View