loading page

Land Use Land Classification (LULC) Change Detection with High Cadence Multimodal Image Time Series and Self-Supervised Learning.
  • +7
  • Akhil Singh Rana,
  • Caglar Senaras,
  • Benjamin Bischke,
  • Patrick Helber,
  • Timothy Davis,
  • Wanda Keersmaecker,
  • Daniele Zanaga,
  • Annett Wania,
  • Ruben Van De Kerchove,
  • Giovanni Marchisio
Akhil Singh Rana
Planet Labs Germany GmbH

Corresponding Author:[email protected]

Author Profile
Caglar Senaras
Planet Labs Germany GmbH
Author Profile
Benjamin Bischke
Vision Impulse GmbH
Author Profile
Patrick Helber
Vision Impulse GmbH
Author Profile
Timothy Davis
Planet Labs Germany GmbH
Author Profile
Wanda Keersmaecker
VITO
Author Profile
Daniele Zanaga
VITO
Author Profile
Annett Wania
Planet Labs Germany GmbH
Author Profile
Ruben Van De Kerchove
VITO
Author Profile
Giovanni Marchisio
Planet Labs PBC
Author Profile

Abstract

​​We believe that the future of Earth Observation (EO) is in fusion, harmonization, and interoperability of satellite imagery. Intensified monitoring leads to better understanding of land use and reduction of maintenance costs for all Land Cover products. RapidAI4EO is an initiative that aims to establish the foundations for the next generation of Copernicus Land Monitoring Service (CLMS) products. The goal is to provide intensified monitoring of Land Use (LU), Land Cover (LC) changes at a much higher spatial resolution and temporal cadence than is possible today. Key objectives are to explore, evaluate, and quantify state of the art deep learning algorithms and methodologies that leverage three meter, daily time series, in conjunction with higher spectral resolution Sentinel-2 imagery.  Consortium Partners: The RapidAI4EO projects brings together Planet Labs PBC, the operator of the world’s largest fleet of Earth-imaging satellites and the recognized leader of the CubeSat revolution, VITO, the main production center of the Copernicus Global Land Service, Vision Impulse, a recent spin-off of German Research Center for Artificial Intelligence (DFKI, the largest research center for Artificial Intelligence in the world and one of the two European NVIDIA AI Labs), the International Institute for Applied Systems Analysis (IIASA) whose Center for Earth Observation and Citizen Science (EOCS) devises new approaches and technologies to collect data on land cover and land use, and Serco Italia, a worldwide service provider to governments, international agencies and industries, and operator of the ONDA DIAS platform. The objectives of RapidAI4EO are: 1) the creation and release of the most comprehensive spatiotemporal EO training sets ever produced for machine learning;  2) the development and implementation of novel AI solutions for continuous change detection that leverage these data sets; 3)the ability to drive frequent temporal updates of the Corine Land Cover (CLC) product; and 4)to demonstrate improved LULC mapping using harmonized Sentinel-2 and very high resolution, high cadence data streams.