Using deep learning for digital soil mapping

<p>Digital soil mapping (DSM) has been widely used as a cost-effective method for generating soil maps. However, current DSM data representation rarely incorporates contextual information of the landscape. DSM models are usually calibrated using point observations intersected with spatially co...

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Main Authors: J. Padarian, B. Minasny, A. B. McBratney
Format: Article
Language:English
Published: Copernicus Publications 2019-02-01
Series:SOIL
Online Access:https://www.soil-journal.net/5/79/2019/soil-5-79-2019.pdf
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spelling doaj-9691a0b48d4b4b379d1cb70462b098262020-11-25T00:04:05ZengCopernicus PublicationsSOIL2199-39712199-398X2019-02-015798910.5194/soil-5-79-2019Using deep learning for digital soil mappingJ. PadarianB. MinasnyA. B. McBratney<p>Digital soil mapping (DSM) has been widely used as a cost-effective method for generating soil maps. However, current DSM data representation rarely incorporates contextual information of the landscape. DSM models are usually calibrated using point observations intersected with spatially corresponding point covariates. Here, we demonstrate the use of the convolutional neural network (CNN) model that incorporates contextual information surrounding an observation to significantly improve the prediction accuracy over conventional DSM models. We describe a CNN model that takes inputs as images of covariates and explores spatial contextual information by finding non-linear local spatial relationships of neighbouring pixels. Unique features of the proposed model include input represented as a 3-D stack of images, data augmentation to reduce overfitting, and the simultaneous prediction of multiple outputs. Using a soil mapping example in Chile, the CNN model was trained to simultaneously predict soil organic carbon at multiples depths across the country. The results showed that, in this study, the CNN model reduced the error by 30&thinsp;% compared with conventional techniques that only used point information of covariates. In the example of country-wide mapping at 100&thinsp;m resolution, the neighbourhood size from 3 to 9 pixels is more effective than at a point location and larger neighbourhood sizes. In addition, the CNN model produces less prediction uncertainty and it is able to predict soil carbon at deeper soil layers more accurately. Because the CNN model takes the covariate represented as images, it offers a simple and effective framework for future DSM models.</p>https://www.soil-journal.net/5/79/2019/soil-5-79-2019.pdf
collection DOAJ
language English
format Article
sources DOAJ
author J. Padarian
B. Minasny
A. B. McBratney
spellingShingle J. Padarian
B. Minasny
A. B. McBratney
Using deep learning for digital soil mapping
SOIL
author_facet J. Padarian
B. Minasny
A. B. McBratney
author_sort J. Padarian
title Using deep learning for digital soil mapping
title_short Using deep learning for digital soil mapping
title_full Using deep learning for digital soil mapping
title_fullStr Using deep learning for digital soil mapping
title_full_unstemmed Using deep learning for digital soil mapping
title_sort using deep learning for digital soil mapping
publisher Copernicus Publications
series SOIL
issn 2199-3971
2199-398X
publishDate 2019-02-01
description <p>Digital soil mapping (DSM) has been widely used as a cost-effective method for generating soil maps. However, current DSM data representation rarely incorporates contextual information of the landscape. DSM models are usually calibrated using point observations intersected with spatially corresponding point covariates. Here, we demonstrate the use of the convolutional neural network (CNN) model that incorporates contextual information surrounding an observation to significantly improve the prediction accuracy over conventional DSM models. We describe a CNN model that takes inputs as images of covariates and explores spatial contextual information by finding non-linear local spatial relationships of neighbouring pixels. Unique features of the proposed model include input represented as a 3-D stack of images, data augmentation to reduce overfitting, and the simultaneous prediction of multiple outputs. Using a soil mapping example in Chile, the CNN model was trained to simultaneously predict soil organic carbon at multiples depths across the country. The results showed that, in this study, the CNN model reduced the error by 30&thinsp;% compared with conventional techniques that only used point information of covariates. In the example of country-wide mapping at 100&thinsp;m resolution, the neighbourhood size from 3 to 9 pixels is more effective than at a point location and larger neighbourhood sizes. In addition, the CNN model produces less prediction uncertainty and it is able to predict soil carbon at deeper soil layers more accurately. Because the CNN model takes the covariate represented as images, it offers a simple and effective framework for future DSM models.</p>
url https://www.soil-journal.net/5/79/2019/soil-5-79-2019.pdf
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