Abstract

Pressures on natural resources are increasing and a number of challenges need to be overcome to meet the needs of a growing population in a period of environmental variability. Some of these environmental issues can be monitored using remotely sensed Earth Observations (EO) data that are increasingly available from a number of freely and openly accessible repositories. However, the full information potential of EO data has not been yet realized. They remain still underutilized mainly because of their complexity, increasing volume, and the lack of efficient processing capabilities. EO Data Cubes (DC) are a new paradigm aiming to realize the full potential of EO data by lowering the barriers caused by these Big data challenges and providing access to large spatio-temporal data in an analysis ready form. Systematic and regular provision of Analysis Ready Data (ARD) will significantly reduce the burden on EO data users. Nevertheless, ARD are not commonly produced by data providers and therefore getting uniform and consistent ARD remains a challenging task. This paper presents an approach to enable rapid data access and pre-processing to generate ARD using interoperable services chains. The approach has been tested and validated generating Landsat ARD while building the Swiss Data Cube.

Highlights

  • Due to pressures from climate change, demographic, and economic growth, the land cover is changing (Rockstrom et al, 2009; Wulder, Masek, Cohen, Loveland, & Woodcock, 2012)

  • Earth Observations (EO) Data Cubes (DC) are a new paradigm aiming to realize the full potential of EO data by lowering the barriers caused by these Big data challenges and providing access to large spatio-temporal data in an analysis ready form

  • This paper presents an approach to enable rapid data access and pre-processing to generate Analysis Ready Data (ARD) using interoperable services chains

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Summary

Introduction

Due to pressures from climate change, demographic, and economic growth, the land cover is changing (Rockstrom et al, 2009; Wulder, Masek, Cohen, Loveland, & Woodcock, 2012). To better preserve the quality of the environment and improve the management of natural resources and land planning, it is useful to monitor these changes through time (Wulder et al, 2008). With the archives from Landsat satellite sensors, the evolution of this coverage can be monitored all the way back to 1972 and with updates every 15 days at 30 m spatial resolution (Woodcock et al, 2008). With the introduction of new satellite sensors (e.g. Sentinel 2) both the spatial and temporal resolutions have increased (Gómez, White, & Wulder, 2016)

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