Foundation for Space Science, Technology and Applications Vanildes Ribeiro - System Analyst – FUNCATE -

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Presentation transcript:

Foundation for Space Science, Technology and Applications Vanildes Ribeiro - System Analyst – FUNCATE - Gilberto Queiroz – Researcher - INPE – The Amazon Deforestation Monitoring System: A large environmental database developed on TerraLib and PostgreSQL

 Non profit private foundation  Engaged on projects of spatial applied research and spatial technology transfer.  Founded in 1982 (25 years)  Technical agreements with Brazilian Research Partners Mineral Technology Center Brazilian Technology Institute Science Aerospatial Technical Center Brazilian Air Force National Institute for Space Research Foundation for Space Science, Technology and Applications

FUNCATE Meteorology Earth Science Spatial Engineering Multidisciplinary projects Human resources allocation Financial management of research projects Foundation for Space Science, Technology and Applications

Earth Sciences - ES  Digital Cartography  Remote Sensing  Geographic Information Systems  Information Technology  Training Project on Earth Sciences  Land Use and deforestation  Municipal administration  Environmental evaluation  Corporate GIS  Web based GIS

The Amazon rainforest monitoring system of the PRODES project.

Goals To produce deforestation maps of the Brazilian Amazon. To calculate the annual deforestation rate

Brazil uses remote sensing satellite data to monitor deforestation in the Brazilian Amazon biome, which covers an area of 4,7 million square kilometers. Every year a deforestation map and a yearly deforestation rate, are produced and disseminated through the Internet. The monitoring requires that a complete coverage of satellite images, with 20 to 30 meters resolution, to be acquired, automatically processed and analyzed by technicians. Background

Amazon deforestation in 2003 mapped by PRODES Increasing Deforestation in Amazon

Background PRODES was initiated at the end of the 80's using analogical interpretation process.PRODES In the following years deforestation mapping evolved to a fully digital procedure using SPRING. Deforestation mapping demanded 229 independent databases, each one covering one LANDSAT 5 satellite image, creating an environment of complex management.SPRING The complexity would increase with the use of images from other satellites (CBERS, LANDSAT, DMC), which are needed to guarantee data availability under a satellite operational breakdown.CBERS TerraAmazon was developed to simplify deforestation mapping in this scenario with the advantage of delivering faster results.

Technologies Multiplatform LINUX or Windows machines. Developed using C++ and the graphical widget toolkit QT. Database server running on PostgreSQL version 8.2, on a LINUX Server. Developed based on TerraLib open source technology ( Web site running on TerraLib PHP extension and TerraLib OGC WMS server.Web site running Repository of image processing algorithms SPRINGSPRING TerraLib implements methods for image and vector data processing and analysis. TerraPHP extends PHP to access TerraLib for web applications. SPRING implements a variety algorithms for images and vector data processing.

Methodology TerraAmazon manages all operations using a unique corporate database in a distributed and concurrent environment. Cells were created by partitioning the project extents using a 0.25 degrees grid. Each interpreter can lock one or more cells to process using a long transactions schema. Image processing tools are used to automatically extract deforestation polygons and include: TIFF format image import, georeferencing using control points, enhancement and color composition, mixture model, segmentation, and classification.

Methodology

RAW SPR GRID ESRI ASCII GRID GeoTIFF JPEG

Methodology Interpolators: Near Neighborhood Bilinear Bicubic Interactive interfaces Equalization functions

Methodology Soil Image Vegetation Image Shade Image Original Image

Methodology Input Soil ImageOutput Vectors

Methodology K-means classification Input Image Input Image and Output Clouds

CLIP CLOUDS BY CELL Methodology

Starting edition: Defining the scene (satellite,path,row and date); Creating a Task;

Methodology Interpreter has to “check-in” cells to work.

Unified database Multi-user Concurrent use Red cells are blocked and green cells are enable to this user Methodology

Drawing a polygon

Methodology Classifying the deforestation polygon

Methodology deforestation defined

Methodology Demonstration...

Methodology Use same edition tools of interpretation; Rejected areas are returned to interpreter; Usually short corrections are made; Auditor is specialist in remote sensing; Check inconsistency and report to coordinator;

Results Final Map Classes: Forest Deforestarion Clouds No Forest Hydrography

Results Final Calculated Areas (km²): Deforestation Forest Clouds

Results Historical Series

Results Management tools: Task Control

Results Deforestation map of

LANDSAT - TM CBERS - CCD DMC Multi-satellites were used to map deforestation in 2005 to minimize cloud coverage impacts. Figures 221 CBERS images, 223 LANDSAT images and 18 DMC images were used to map deforestation for the period.CBERS 70 CBERS images and 211 LANDSAT images were used for the period.CBERS

Figures Up to 20 concurrent users accessed the system during the interpretation phase in These users added 213,693 new deforestation polygons and 595,575 new cloud polygons. Currently the database stores 2,380,880 polygons of different categories The most complex polygon has 69,925 vertices, with the average number of vertices in a polygon being 59. The average number of holes per polygon is 7. The volume of data stored in the database is 237 gigabytes..

WebSites Deforestation database: TerraAmazon:

Managers: Ubirajara Freitas Vanildes Ribeiro TerraAmazon Developers: Mário Petinatti Eric Abreu Tools Developers: Rui Mauricio Frederico Bede Hilton Medeiros Team Web Developers: André Carvalho Paulo Gazeta Documentation: Cristhiane Santos Isabele Anunciação

Thank you! TerraAmazon is distributed under a LGPL License.