Better mapping of human settlements to support crisis management operations

When a major disaster strikes in remote parts of the world, knowing if the area is populated, and how densely, is crucial for the effective organisation of humanitarian operations. The Global Human Settlements Layer (GHSL), developed by the European Commission's Joint Research Centre (JRC), will soon provide this detailed information for the first time on a global scale. The breakthrough is new advanced algorithms, developed by the JRC, that allow automatic analysis of medium resolution data provided by European satellites. The first test results confirm that the combined use of ICT technologies permit fast and precise mapping of built-up areas, anywhere in the world. In addition, the algorithms allow massive datasets to be processed more efficiently and rapidly, making it possible to monitor the changes in human settlements regularly and equally importantly, to collect the same information from heterogeneous satellite data. This can help to reduce risks in areas that experience recurrent disasters and to focus post-disaster humanitarian interventions on the most likely populated places in disaster affected countries and regions.

The European Commission's Joint Research Centre, in collaboration with the European Space Agency's (ESA) Earth Observation Ground Segment Department (EOP-G) has produced the first prototype of a new Global Human Settlement Layer (GHSL) using European radar satellite (ENVISAT) capacity and advanced automatic pattern recognition algorithms.

One of the major problems in disaster-struck areas in less developed countries is the lack of relevant and up to date pre-disaster information that can help to quickly locate and assess the type and extent of damage, especially in populated places. The GHSL will help to focus damage analysis very quickly over populated places, leading to improvements in emergency rescue and humanitarian relief operations.

The GHSL will help to improve the quantification of the building stock which is valuable information both for risk assessment activities and for emergency rescue operations. As the building stock is an indicator of human presence, this critical piece of information on population (often lacking in remote areas) can help the first responder communities to focus their efforts in a particular area.

Human settlements in Africa – successful test of JRC´s algorithms

The first test results produced by the automatic inferential system, designed and developed by the JRC, cover most of the African continent's surface, proving that the combined use of medium resolution imagery and advanced algorithms allow fast and precise mapping of built-up areas anywhere in the world.

The inferential system successfully classified about 4 billion image elements related to 270 scenes pertaining to the ENVISAT ASAR sensor provided by the European Space Agency (ESA). The results confirm notable expected improvements using 75m resolution data processed by means of the JRC's method over already available human settlement data.

These previous data were produced from 500m resolution data of the US MODIS or Moderate Resolution Imaging Spectro-radiometer instrument aboard the Terra EOS satellite and of the Defense Meteorological Satellite Program (DMSP) Operational Linescan System (OLS) data at 3 km resolution.

As can be seen in the pictures below, the JRC method allows for a more detailed mapping of the settlements.

During 2011, the rest of the global landmass will be processed by the JRC using available European radar satellite capacity in order to complete the production of the first ever global human settlement layer. Moreover, the GHSL concept has an open and scalable design based on semantic interoperability and consistent multi-scale reasoning. This means that heterogeneous platforms, including existing and planned optical and radar sensors can contribute to refining the overall GHSL picture in a consistent manner.

Published by: EurekAlert

Full article: http://www.eurekalert.org/pub_releases/2011-02/ecjr-bmo021111.php