Thematic Session: IT Innovations Geospatial Approaches to ......20 Lessons Learnt • Availability...
Transcript of Thematic Session: IT Innovations Geospatial Approaches to ......20 Lessons Learnt • Availability...
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Thematic Session: IT Innovations
Geospatial Approaches to Damage Assessment: The Example of Haiti Earthquake
Date: 10/05/2011Location: Geneva, Switzerland
Name: Luca Dell’OroTitle: Research AssociateOrganization: UNITAR-UNOSAT
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• United Nations Institute for Training and Research
• Mission: To deliver innovative training and conduct research
on knowledge systems to develop the capacity of
beneficiaries in the fields of Environment; Peace-Security and
Diplomacy, Governance and Research
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• UNOSAT is the Operational Satellite Applications Programme
of the United Institute of Training and Research (UNITAR)
• Goal: to make satellite analysis/solutions and geographic
information easily accessible to the UN, local governments,
international organizations and NGOs
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UNOSAT’s three main operational areas
Satellite based Analysis and Mapping
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• UNOSAT mapping Covers
major conflicts and all types
of disasters: 35 events per
year
• Tasked since Jan. 2003 in
over 200 emergencies &
conflicts;
• UNOSAT means:
- Over 1000 maps/analyses,
- 2 Million map downloads, - Professional training &
Capacity Building 5
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Crucial Role Of Geo-Information in Disaster ResponseDe
man
d fo
r geo
-info
rmat
ion
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The Haiti Earthquake (12/01/2010)
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Thousands of GI related products produced by over 50 different organizations...
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Thousands of GI related products produced by over 50 different organizations...
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Haiti EQ: UNOSAT Geospatial Products (Timeframe)
12 Jan. 22 Jan. 26 Feb
Haiti EQ
Situation maps Preliminary DA
UN-EC-WBComprehensive DA
and Joint Blds DA Atlas
18 Feb. 12 Mar.
PDNA
17 Mar.
S. Dom.Conf.
FlashAppeal NY
Conf.
31 Mar.
UNOSAT/JRC/WBcombined GIS database
Field Validation (UNOSAT- CNIGS- JRC)
April
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Haiti EQ: UNOSAT Geospatial Products (Timeframe)
12 Jan. 22 Jan. 26 Feb
Haiti EQ
Situation maps Preliminary DA
UN-EC-WBComprehensive DA
and Joint Blds DA Atlas
18 Feb. 12 Mar.
PDNA
17 Mar.
S. Dom.Conf.
FlashAppeal NY
Conf.
31 Mar.
UNOSAT/JRC/WBcombined GIS database
Field Validation (UNOSAT- CNIGS- JRC)
April
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UNOSAT methodological approach for Remote Sensing based building damage analysis:
Pre-Disaster Sat. Image
Post-Disaster Aerial Photo
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GRADE 5: Destruction
GRADE 4: Very heavy damage
GRADE 3: Substantial to heavy damage.
GRADE 1: No visible damage
UNOSAT methodological approach for Remote Sensing based building damage analysis:
European Macro-seismic Scale-98 (EMS-98) definition:
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•WB, EC-JRC and UNOSAT worked jointly to
provide for the Post Disaster Needs
Assessment (PDNA) process a
comprehensive atlas of blds damage
assessment.
•300,000 assessed buildings.
•67,000 identified as damaged (Grade 4
and5 on the EMS-98 scale).
UNOSATJRC
WB
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UNOSAT – JRC – WB combined DA-GIS database
http://www.unitar.org/unosat/haiti-earthquake-2010-remote-sensing-based-building-damage-assessment-data
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•Field Validation Activities
∼ 6,000 bld samples
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Accuracy Assessment Results: 4 and 2 damage classes Validation
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Lessons Learnt:• Availability of suitable imagery, pre-disaster baseline GIS
datasets (e.g. census, building footprints, roads, critical
facilities, landcover/landuse, etc..) is a key to improve and
to speed up Remote Sensing based damage analysis.
• Remote Sensing imagery has still some limitations for
assessing different levels of building damages...(spatial
resolution, angle of acquisition ,etc..) but with the fast
improvements in RS technology they will be reduced..
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Lessons Learnt• Availability of suitable imagery, pre-disaster baseline GIS
datasets (e.g. census, building footprints, roads, critical
facilities, landcover/landuse, etc..) is a key to improve and to
speed up Remote Sensing based damage analysis.
• Remote Sensing imagery has still some limitations for
assessing different levels of building damages...(spatial
resolution, angle of acquisition ,etc..) but with fast
improvements in RS technology they will be reduced..• Crow sourcing is very important for primary and secondary
data collection but expertise in analysis is needed to make good use of it
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Lessons Learnt• Availability of suitable imagery, pre-disaster baseline GIS datasets
(e.g. census, building footprints, roads, critical facilities, landcover/landuse, etc..) is a key to improve and to speed up RS based damage analysis.
• RS imagery has still some limitations for assessing different levels of building damages...(spatial resolution, angle of acquisition ,etc..) but with fast improvements in RS technology they will be reduced..
• Crow sourcing is very important for primary and secondary data collection but expertise in analysis is needed to make good use of it.
• UNOSAT-JRC-WB are working together on the definition of standards and validation methods (SOPs) to conduct collaborative Remote Sensing based damage assessment.