Tackling Fluffy Clouds: Field Boundaries Detection Using Time Series of S2 And/Or S1 Imagery

48 Pages Posted: 20 Sep 2024

See all articles by Foivos Diakogiannis

Foivos Diakogiannis

affiliation not provided to SSRN

Zheng-Shu Zhou

affiliation not provided to SSRN

Jeff Wang

CSIRO

Gonzalo Mata

CSIRO

Dave Henry

CSIRO

Roger A. Lawes

Government of the Commonwealth of Australia - CSIRO (Commonwealth Scientific and Industrial Research Organisation)

Amy Parker

CSIRO

Peter Caccetta

CSIRO

Rodrigo Ibata

University of Strasbourg

Ondrej Hlinka

CSIRO

Jonathan Richetti

Government of the Commonwealth of Australia - CSIRO (Commonwealth Scientific and Industrial Research Organisation)

Kathryn Batchelor

CSIRO

Chris Herrmann

CSIRO

Andrew Toovey

CSIRO

John Taylor

affiliation not provided to SSRN

Abstract

Accurate field boundary delineation is a critical challenge in digital agriculture, impacting everything from crop monitoring to resource management. Existing methods often struggle with noise and fail to generalize across varied landscapes, particularly when dealing with cloud cover in optical remote sensing. In response, this study presents a new approach that leverages time series data from Sentinel-2 (S2) and Sentinel-1 (S1) imagery to improve performance under diverse cloud conditions, without the need for manual cloud filtering. We introduce a 3D Vision Transformer architecture specifically designed for satellite image time series, incorporating a memory-efficient attention mechanism. Two models are proposed: PTAViT3D, which handles either S2 or S1 data independently, and PTAViT3D-CA, which fuses both datasets to enhance accuracy. Both models are evaluated under sparse and dense cloud coverage by exploiting spatio-temporal correlations.Our results demonstrate that the models can effectively delineate field boundaries, even with partial (S2 or S2\&S1 data fusion) or dense cloud cover (S1), with the S1-based model providing performance comparable to S2 imagery in terms of spatial resolution. A key strength of this approach lies in its capacity to directly process cloud-contaminated imagery by leveraging spatio-temporal correlations in a memory-efficient manner. This methodology, used in the ePaddocks product to map Australia’s national field boundaries, offers a robust, scalable solution adaptable to varying agricultural environments, delivering precision and reliability where existing methods falter. Our code is available at \href{https://github.com/feevos/tfcl}{https://github.com/feevos/tfcl}.

Keywords: convolutional neural network, semantic segmentation, Attention, vision transformer, change detection, time series, parcel boundaries, field boundaries

Suggested Citation

Diakogiannis, Foivos and Zhou, Zheng-Shu and Wang, Jeff and Mata, Gonzalo and Henry, Dave and Lawes, Roger A. and Parker, Amy and Caccetta, Peter and Ibata, Rodrigo and Hlinka, Ondrej and Richetti, Jonathan and Batchelor, Kathryn and Herrmann, Chris and Toovey, Andrew and Taylor, John, Tackling Fluffy Clouds: Field Boundaries Detection Using Time Series of S2 And/Or S1 Imagery. Available at SSRN: https://ssrn.com/abstract=4962467 or http://dx.doi.org/10.2139/ssrn.4962467

Foivos Diakogiannis (Contact Author)

affiliation not provided to SSRN ( email )

Zheng-Shu Zhou

affiliation not provided to SSRN ( email )

Jeff Wang

CSIRO ( email )

26 DICK PERRY AVENUE
KENSINGTON
PERTH, WA 6151
Australia

Gonzalo Mata

CSIRO ( email )

26 DICK PERRY AVENUE
KENSINGTON
PERTH, WA 6151
Australia

Dave Henry

CSIRO ( email )

26 DICK PERRY AVENUE
KENSINGTON
PERTH, WA 6151
Australia

Roger A. Lawes

Government of the Commonwealth of Australia - CSIRO (Commonwealth Scientific and Industrial Research Organisation) ( email )

Black Mountain
Canberra
Australia

Amy Parker

CSIRO ( email )

26 DICK PERRY AVENUE
KENSINGTON
PERTH, WA 6151
Australia

Peter Caccetta

CSIRO ( email )

26 DICK PERRY AVENUE
KENSINGTON
PERTH, WA 6151
Australia

Rodrigo Ibata

University of Strasbourg ( email )

61, avenue de la foret noire
Strasbourg, 3000
France

Ondrej Hlinka

CSIRO ( email )

26 DICK PERRY AVENUE
KENSINGTON
PERTH, WA 6151
Australia

Jonathan Richetti

Government of the Commonwealth of Australia - CSIRO (Commonwealth Scientific and Industrial Research Organisation) ( email )

Black Mountain
Canberra
Australia

Kathryn Batchelor

CSIRO ( email )

26 DICK PERRY AVENUE
KENSINGTON
PERTH, WA 6151
Australia

Chris Herrmann

CSIRO ( email )

26 DICK PERRY AVENUE
KENSINGTON
PERTH, WA 6151
Australia

Andrew Toovey

CSIRO ( email )

26 DICK PERRY AVENUE
KENSINGTON
PERTH, WA 6151
Australia

John Taylor

affiliation not provided to SSRN ( email )

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