Satellite Image Time Series Analysis for Big Earth Observation Data
- URL: http://arxiv.org/abs/2204.11301v1
- Date: Sun, 24 Apr 2022 15:23:25 GMT
- Title: Satellite Image Time Series Analysis for Big Earth Observation Data
- Authors: Rolf Simoes, Gilberto Camara, Gilberto Queiroz, Felipe Souza, Pedro R.
Andrade, Lorena Santos, Alexandre Carvalho and Karine Ferreira
- Abstract summary: This paper describes sits, an open-source R package for satellite image time series analysis using machine learning.
We show that this approach produces high accuracy for land use and land cover maps through a case study in the Cerrado biome.
- Score: 50.591267188664666
- License: http://creativecommons.org/licenses/by-nc-sa/4.0/
- Abstract: The development of analytical software for big Earth observation data faces
several challenges. Designers need to balance between conflicting factors.
Solutions that are efficient for specific hardware architectures can not be
used in other environments. Packages that work on generic hardware and open
standards will not have the same performance as dedicated solutions. Software
that assumes that its users are computer programmers are flexible but may be
difficult to learn for a wide audience. This paper describes sits, an
open-source R package for satellite image time series analysis using machine
learning. To allow experts to use satellite imagery to the fullest extent, sits
adopts a time-first, space-later approach. It supports the complete cycle of
data analysis for land classification. Its API provides a simple but powerful
set of functions. The software works in different cloud computing environments.
Satellite image time series are input to machine learning classifiers, and the
results are post-processed using spatial smoothing. Since machine learning
methods need accurate training data, sits includes methods for quality
assessment of training samples. The software also provides methods for
validation and accuracy measurement. The package thus comprises a production
environment for big EO data analysis. We show that this approach produces high
accuracy for land use and land cover maps through a case study in the Cerrado
biome, one of the world's fast moving agricultural frontiers for the year 2018.
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