Instituto Nacional de Pesquisas Espaciais - INPE.

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Instituto Nacional de Pesquisas Espaciais - INPE

MONITORING OF TROPICAL DEFORESTATION PRODES »Objectives »Operational Methodology »Results DIGITAL PRODES »Objectives »Proposed Methodology »Results for 231/67 TM scene

To estimate the extent of gross deforestation and annual rate of gross deforestation To update the digital database To distribute the increments of deforestation Into major forest types Into classes of size Project

Satellite Image (1:250,000) + Overlay Minimum area identified 6.25 ha Project

Increment 97/98 Project

* Decade Mean ** Biennium ACRE AMAPÁ AMAZONAS MARANHÃO MATO GROSSO PARÁ RONDÔNIA RORAIMA TOCANTINS AMAZONIA 77/78* / / / / /94** / / / ANNUAL RATE GROSS DEFORESTATION (km² / year) 97/ Project

ACRE AMAPÁ AMAZONAS MARANHÃO MATO GROSSO PARÁ RONDÔNIA RORAIMA TOCANTINS BRAZILIAN AMAZONIA (Includes old defortation) Jan/ Apr/ Aug/ Aug/ Aug/ Aug/ Aug/ Aug/ Aug/ Aug/ EXTENT OF GROSS DEFORESTATION (km²) Aug/ Project

EVOLUTION OF THE MEAN RATE OF GROSS DEFORESTATION (km² / year) * Relative to the area of forest remains. ** Data from 1993 and 1994 refer to the estimates of the mean rate of gross deforestation for the period *** The mean rate of gross deforestation for 1999 was derived from the analysis of 44 TM-Landsat scenes. MEAN RATE OF GROSS DEFORESTATION (km² / year) Project

Dense Tropical Rain Forest - Distribution of the mean rate of gross deforestation by classes of size * Relative to the annual mean rate in Dense Tropical Rain Forest MEAN RATE OF GROSS DEFORESTATION (% / year)* Project

Deforestation Observed in 1998 Deforestation ’98 Dense Savanna Woodland Amazon White-Sand Woodland Dense Tropical Rain Forest Open Tropical Rain Forest Early Primary Succession Communities Contact Zone Seasonally Deciduous Tropical Forest Non Forest Water Project

Year Mean Rate of GrossDeforestation in the Critical Areas ( km²/ year) Mean Rate of Gross Deforestation ( km² / year) % of the Rate of Gross Deforestation Assotiated with the Critical Areas Project Dense Savanna Woodland Amazon White-Sand Woodland Dense Tropical Rain Forest Open Tropical Rain Forest Early Primary Succession Communities Contact Zone Seasonally Deciduous Tropical Forest Non Forest Water Critical Areas

Machine-hours: Person-hours: Time required: 4 months Mean number of people/day: 70 Cost: R$ ,00 Project

DIGITAL PRODES »Objectives »Proposed Methodology »Results for 231/67 TM scene

OBJECTIVES To automate the image interpretation procedure and to build a Database with deforested areas information. MATERIAL AND METHODS Landsat TM Linear Spectral Mixing Model Image Segmentation and Classification SPRING

STUDY AREA - Path 231 / Row 67 - Rondônia State

Vegetation Fraction Image

Soil Fraction Image

Shade Fraction Image

Segmented Shade Fraction Image

DIMENSIONALITY REDUCTION OF (RGB) TM IMAGE BY GENERATING SHADE FRACTION IMAGE, WHICH ALLOWS THE DISCRIMINATION OF SURFACE TARGETS Typical deforestation Regrowth Burned areas Primary forest DRAINAGE DISCRIMINATION

IMAGE SEGMENTATION AND CLASSIFICATION OF SHADE FRACTION IMAGE SIMILARITY (8) AND AREA (16) THRESHOLD VALUES (MINIMUM MAPPED AREA = 5.76 ha)

THE CLASSIFICATION EDITION DONE BY PHOTOINTERPRETER IN THE COMPUTER SCREEN THE OVERLAP OF VECTOR DATA ALLOW TO EDIT OR TO ELIMINATE POLYGONS #AGREGADO-97 ASSURES AND MAINTAINS THE COHERENCE WITH THE HISTORICAL DATA OF ANALOGICAL PRODES

Deforested Areas up to 1997

DIGITAL PRODES: ACRE, RONDÔNIA, MATO GROSSO, AND PARÁ ( APPROXIMATELY 80% OF DEFORESTATION ) 110 LANDSAT TM IMAGES ACQUIRED IN 1997

# EXAMPLE OF FINAL REPRESENTATION PROPOSED FOR THE DIGITAL PRODES PROJECT

MAPPING BURNED AREAS Burning occurred over recent deforested areas (orange color, 186 km2) were discriminated from those occurred over old deforested areas (red color, 964 km2) mapped using 1998 TM image. Burned areas over old deforestationa ( 84%) Burned areas over recent deforestation 16%)

MAPPING REGROWTH AREAS Regrowth CLASSIFICATION OF SEVEN REGROWTH CLASSES

D E T E R SYSTEM OF DEFORESTATION DETECTION IN A REAL TIME Based on the application of PRODES Digital methodology over MODIS images

PRODES 2003 ESTIMATIVA LANDSAT-TM5 DETER 2004 DETECÇÃO MODIS/WFI PRODES 2004 ESTIMATIVA LANDSAT/CBERS/.... RELATION BETWEEN DETER X PRODES

THE HISTORICAL DATA OF PRODES DIGITAL 2000 NEED TO BE COMPLETED AND OVERLAYED OVER MODIS IMAGES

AREA EXTENSION OF PRODES DIGITAL OVER MODIS IMAGE (COMPOSITE AUGUST 2003)

DETAIL OF AREA EXTENSION PRODES DIGITAL OVER MODIS IMAGE (COMPOSITE AUGUST 2003)

EXAMPLE OF DEFORESTATION DETECTION “ APRIL / MAY ” PROJETO DETER

MODIS COMPOSITE 22 APRIL - 07 MAY 2004 R(MIR) G(NIR) B(Red)

DETAIL - MODIS COMPOSITE- 22 APRIL - 07 MAY 2004 SOIL FRACTION SHADE FRACTION VEGETATION FRACTION Rio Xingu

SOIL FRACTION IMAGE (COMPOSITE 22 APRIL - 07 MAY 2004)

CLASSIFICATION OF SOIL FRACTION IMAGE

CLASSIFICATION OF MODIS IMAGE (COMPOSITE 22 APRIL - 07 MAY 2004) AREA EXTENSION UP TO_AUGUST INCREMENT UP TO 07 MAIO

NEW AREA EXTENSION UP TO 07 MAY 2004 OVER MODIS IMAGE (22 APRIL - 07 MAY)

AREA EXTENSION UP TO 07 MAY 2004 OVER MODIS IMAGE 21 MAY 2004

CLASSIFICATION OF MODIS DAILY IMAGE FROM 21 MAY 2004