Detect, Consolidate, Delineate: Scalable Mapping of Field Boundaries Using Satellite Images
Digital agriculture services can greatly assist growers to monitor their fields and optimize their use throughout the growing season. Thus, knowing the exact location of fields and their boundaries is a prerequisite. Unlike property boundaries, which are recorded in local council or title records, f...
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doaj-361e719f545a4dfc8f2b24bff28654292021-06-30T23:20:50ZengMDPI AGRemote Sensing2072-42922021-06-01132197219710.3390/rs13112197Detect, Consolidate, Delineate: Scalable Mapping of Field Boundaries Using Satellite ImagesFrançois Waldner0Foivos I. Diakogiannis1Kathryn Batchelor2Michael Ciccotosto-Camp3Elizabeth Cooper-Williams4Chris Herrmann5Gonzalo Mata6Andrew Toovey7CSIRO Agriculture & Food, St Lucia, QLD 4067, AustraliaInternational Centre for Radio Astronomy Research, University of Western Australia, Crawley, WA 6009, AustraliaCSIRO Health & Biosecurity, 147 Underwood Avenue, Floreat, WA 6014, AustraliaCSIRO Agriculture & Food, St Lucia, QLD 4067, AustraliaCSIRO Health & Biosecurity, Australian e-Health Research Centre, Royal Brisbane and Women’s Hospital, Herston, QLD 4029, AustraliaCSIRO Agriculture & Food, 147 Underwood Avenue, Floreat, WA 6014, AustraliaCSIRO Agriculture & Food, 147 Underwood Avenue, Floreat, WA 6014, AustraliaCSIRO Agriculture & Food, 147 Underwood Avenue, Floreat, WA 6014, AustraliaDigital agriculture services can greatly assist growers to monitor their fields and optimize their use throughout the growing season. Thus, knowing the exact location of fields and their boundaries is a prerequisite. Unlike property boundaries, which are recorded in local council or title records, field boundaries are not historically recorded. As a result, digital services currently ask their users to manually draw their field, which is time-consuming and creates disincentives. Here, we present a generalized method, hereafter referred to as DECODE (DEtect, COnsolidate, and DElinetate), that automatically extracts accurate field boundary data from satellite imagery using deep learning based on spatial, spectral, and temporal cues. We introduce a new convolutional neural network (FracTAL ResUNet) as well as two uncertainty metrics to characterize the confidence of the field detection and field delineation processes. We finally propose a new methodology to compare and summarize field-based accuracy metrics. To demonstrate the performance and scalability of our method, we extracted fields across the Australian grains zone with a pixel-based accuracy of 0.87 and a field-based accuracy of up to 0.88 depending on the metric. We also trained a model on data from South Africa instead of Australia and found it transferred well to unseen Australian landscapes. We conclude that the accuracy, scalability and transferability of DECODE shows that large-scale field boundary extraction based on deep learning has reached operational maturity. This opens the door to new agricultural services that provide routine, near-real time field-based analytics.https://www.mdpi.com/2072-4292/13/11/2197agriculturedeep learningSentinel-2semantic segmentationinstance segmentation |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
François Waldner Foivos I. Diakogiannis Kathryn Batchelor Michael Ciccotosto-Camp Elizabeth Cooper-Williams Chris Herrmann Gonzalo Mata Andrew Toovey |
spellingShingle |
François Waldner Foivos I. Diakogiannis Kathryn Batchelor Michael Ciccotosto-Camp Elizabeth Cooper-Williams Chris Herrmann Gonzalo Mata Andrew Toovey Detect, Consolidate, Delineate: Scalable Mapping of Field Boundaries Using Satellite Images Remote Sensing agriculture deep learning Sentinel-2 semantic segmentation instance segmentation |
author_facet |
François Waldner Foivos I. Diakogiannis Kathryn Batchelor Michael Ciccotosto-Camp Elizabeth Cooper-Williams Chris Herrmann Gonzalo Mata Andrew Toovey |
author_sort |
François Waldner |
title |
Detect, Consolidate, Delineate: Scalable Mapping of Field Boundaries Using Satellite Images |
title_short |
Detect, Consolidate, Delineate: Scalable Mapping of Field Boundaries Using Satellite Images |
title_full |
Detect, Consolidate, Delineate: Scalable Mapping of Field Boundaries Using Satellite Images |
title_fullStr |
Detect, Consolidate, Delineate: Scalable Mapping of Field Boundaries Using Satellite Images |
title_full_unstemmed |
Detect, Consolidate, Delineate: Scalable Mapping of Field Boundaries Using Satellite Images |
title_sort |
detect, consolidate, delineate: scalable mapping of field boundaries using satellite images |
publisher |
MDPI AG |
series |
Remote Sensing |
issn |
2072-4292 |
publishDate |
2021-06-01 |
description |
Digital agriculture services can greatly assist growers to monitor their fields and optimize their use throughout the growing season. Thus, knowing the exact location of fields and their boundaries is a prerequisite. Unlike property boundaries, which are recorded in local council or title records, field boundaries are not historically recorded. As a result, digital services currently ask their users to manually draw their field, which is time-consuming and creates disincentives. Here, we present a generalized method, hereafter referred to as DECODE (DEtect, COnsolidate, and DElinetate), that automatically extracts accurate field boundary data from satellite imagery using deep learning based on spatial, spectral, and temporal cues. We introduce a new convolutional neural network (FracTAL ResUNet) as well as two uncertainty metrics to characterize the confidence of the field detection and field delineation processes. We finally propose a new methodology to compare and summarize field-based accuracy metrics. To demonstrate the performance and scalability of our method, we extracted fields across the Australian grains zone with a pixel-based accuracy of 0.87 and a field-based accuracy of up to 0.88 depending on the metric. We also trained a model on data from South Africa instead of Australia and found it transferred well to unseen Australian landscapes. We conclude that the accuracy, scalability and transferability of DECODE shows that large-scale field boundary extraction based on deep learning has reached operational maturity. This opens the door to new agricultural services that provide routine, near-real time field-based analytics. |
topic |
agriculture deep learning Sentinel-2 semantic segmentation instance segmentation |
url |
https://www.mdpi.com/2072-4292/13/11/2197 |
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