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Map Portals and Geoarchiving:
New Opportunities in
Geospatial Information
Services
Steve Morris
Head of Digital Library Initiatives
NCSU Libraries
GIS Technology: Sustaining the Future
& Understanding the Past
Case Western Reserve University
October 13, 2005
Note: Percentages based on the actual number of
respondents to each question 2
Overview
Brief overview of library roles in digital
geographic information services
Geospatial web services: opportunities and
challenges for libraries
Long-term preservation of digital geospatial
data
Note: Percentages based on the actual number of
respondents to each question 3
Library Geospatial Data Services:
Data Collections
Acquire data (licensed and
public domain)
License data for in-library
or campus use
Provide networked access
Acquire or create value-
added derivatives
Note: Percentages based on the actual number of
respondents to each question 4
Library Geospatial Data Services:
Discovery Tools
Web documentation
Author and publish metadata
Searchable metadata
catalogs
Integrate data into library
catalog
Note: Percentages based on the actual number of
respondents to each question 5
Library Geospatial Data Services:
Reference and Technical Support
Assistance with finding and selecting data
GIS “reference interview”
Line between reference support and technical
support is extremely fuzzy
Support or administration of campus GIS
software licenses
Reference support for locating software tools
(e.g. scripts for ArcView and ArcGIS)
Note: Percentages based on the actual number of
respondents to each question 6
Library Geospatial Data Services:
Workshops and Outreach
In-library workshops and class visits
Online workshops (Virtual Campus)
Marketing and Outreach
Work to engage broader number of academic
departments in GIS activity
Work to lower barrier to entry in GIS work (access
to software, data, training, support)
Library as ‘neutral ground’ well suited to coordinate
with campus GIS infrastructure
Note: Percentages based on the actual number of
respondents to each question 7
Map
Collections
Data
Collections
Map
Servers
Map
Portals
Library Geospatial Data Services Timeline
Map Collections
Paper Maps
Data Collections
CD-ROMs, File server & FTP access
Map Servers
Integrate collected data, Web-based mapping
Map Portals
Integrate distributed, streaming data
Note: Percentages based on the actual number of
respondents to each question 8
NC Local Government Map Services
#
#
#
#
#
#
#
#
#
#
#
#
#
#
#
#
#
#
# #
#
#
#
#
#
#
#
#
#
#
#
County Map Services
# City Map Services
Note: Percentages based on the actual number of
respondents to each question 9
County Government Map Server
Note: Percentages based on the actual number of
respondents to each question 10
State Government Map Server
Note: Percentages based on the actual number of
respondents to each question 11
Federal Government Map Server
Note: Percentages based on the actual number of
respondents to each question 12
Open Geospatial Consortium
(OGC) Technology Overview
The Open Geospatial Consortium (OGC) is a not-for-
profit, international consortium: focus on data
interoperability
Operates a Specification Development Program that
is similar to other Industry consortia (W3C, etc.)
Also operates an Interoperability Program (IP), a
partnership-driven engineering and testing program
designed to deliver proven specifications into the
Specification Development Program.
OGC used to talk about “web-enabling GIS”, now
they talk about “geo-enabling the web.”
Note: Percentages based on the actual number of
respondents to each question 13
National Approaches
USGS National Map
Integrated WMS services
Services catalog
Geospatial One-Stop
Searchable services
Specialized Portals
FEMA Mapping
Katrina Portal
HUD E-Maps
Note: Percentages based on the actual number of
respondents to each question 14
State Approach: NC OneMap
Data integration through
OGC specifications
(currently just WMS)
Data sharing agreements
Metadata outreach
Ongoing data inventories
Practices and guidelines
vis-à-vis map service
configuration
Note: Percentages based on the actual number of
respondents to each question 15
Note: Percentages based on the actual number of
respondents to each question 16
Note: Percentages based on the actual number of
respondents to each question 17
Note: Percentages based on the actual number of
respondents to each question 18
Note: Percentages based on the actual number of
respondents to each question 19
Note: Percentages based on the actual number of
respondents to each question 20
Geospatial Web Service Types
Image services
Deliver image resulting from query against
underlying data
Limited opportunity for analysis
Feature services
Stream actual feature data, greater opportunity for
data analysis
Other
Geocoding services
Routing
.etc.
Note: Percentages based on the actual number of
respondents to each question 21
Geospatial Web Services:
Advantages
Time- and location-independent access
Access to extremely large datasets
Access to most current data
Ad hoc access to data for which there is
typically low demand
Reduce barriers imposed by differences in
formats, coordinate systems, etc.
Access to geoprocessing functionality
Note: Percentages based on the actual number of
respondents to each question 22
Note: Percentages based on the actual number of
respondents to each question 23
Note: Percentages based on the actual number of
respondents to each question 24
Note: Percentages based on the actual number of
respondents to each question 25
Geospatial Web Services:
Shortcomings
Application performance will frequently not
match that of locally loaded data
Up-time reliability issues
Many demonstration services, persistence is
open to question
Dynamically changing content can lead to
analysis surprises
Does not replace aesthetic value of paper
map
Note: Percentages based on the actual number of
respondents to each question 26
Geospatial Web Services:
When Most Useful?
User needs most current data
Data is subject to frequent change & update
User needs access to extremely large
datasets
User wishes to preview data prior to use
User just needs background display
Need to integrate data into portable devices
Data not otherwise available
Note: Percentages based on the actual number of
respondents to each question 27
Geospatial Web Services:
Integration Challenges for Libraries
Services difficult to discover and select from
In case of commercial services, campus
licensing models not well evolved
Linking data objects with services that act
upon them is not well supported by existing
metadata and catalog schemes
Ambiguous rights issues
How to integrate into the physical browse
environment of the map library?
Note: Percentages based on the actual number of
respondents to each question 28
Accessible ArcXML Services
Geospatial Web Services Rights Issues
Example: Desktop GIS-accessible ArcIMS
39 of 100 NC counties have desktop GIS-accessible ArcIMS
services
It is difficult to know how many of these counties actually expect
users to either:
A) access data through desktop GIS for viewing only, or
B) extract and download data
Note: Percentages based on the actual number of
respondents to each question 29
Geospatial Data:
Discovery and Selection Issues
Data extent
Thematic content & attributes
Currency
Format, coordinate system, datum, etc.
Licensing restrictions
Ease of access
Metadata availability
More …
Note: Percentages based on the actual number of
respondents to each question 30
Geospatial Web Services:
Discovery and Selection Issues
Inherits many data selection issues such as
coordinate system, etc.
Service type: image, feature, geocoding, …
Access protocol: OGC specs (WMS, WFS, WCS …),
SOAP, ArcXML (ArcIMS image and feature services,
specialized APIs (e.g. Google Maps)
Reliability, up-time performance, speed
Licensing scheme
Functions: annotation, saved maps, etc.
Image services: image formats
Note: Percentages based on the actual number of
respondents to each question 31
Facilitating Discovery of Services:
Example: Directory of County Map Services
Among top 15
most used
resources on
library web site
99.5% of directory
users from outside
ncsu.edu
Note: Percentages based on the actual number of
respondents to each question 32
Library Opportunities to Provide
Geospatial Web Services
Publish WMS servers from public domain
content not already available
Fill holes in service availability
Publish archival content
counter bias towards current content in the
industry
Publish cascading map services
Create specialized front-ends to existing,
distributed services
Note: Percentages based on the actual number of
respondents to each question 33
Cascading Map Services: Problems
Different versions of OGC standards
e.g., WMS 1.1.0, WMS 1.1.1 …
Differences in layer naming
‘cadastral’ vs. ‘parcels’ vs. ‘property boundaries’
Differences in classification schemes
e.g., inconsistent land use, zoning schemes
Service reliability, addressing stability, uptime
On top of standards & specifications, need
community overlay of best practices
Note: Percentages based on the actual number of
respondents to each question 34
Community Practices in Cascading Map Services
Example: Layer Names, Symbology, Classification
Note: Percentages based on the actual number of
respondents to each question 35
“Web mash-ups” and the New
Mainstream Geospatial Web Services
New services such as Google Maps, MSN
Virtual Earth, Yahoo Maps
Static, tiled images for efficient access
API’s for developer access
Positioning for mobile device-oriented
application development
Engaging mainstream IT and general public
AJAX: Asynchronous Javascript and XML
New forms of map and service publishing
Note: Percentages based on the actual number of
respondents to each question 36
Integrating Traditional Geospatial Data
and Services with New Services
Note: Percentages based on the actual number of
respondents to each question 37
Integrating Traditional Geospatial Data
and Services with New Services
But who preserves the data …?
Note: Percentages based on the actual number of
respondents to each question 38
Today’s geospatial data as tomorrow’s cultural heritage
Note: Percentages based on the actual number of
respondents to each question 39
Time series – vector data
Parcel Boundary Changes 2001-2004, North Raleigh, NC
Note: Percentages based on the actual number of
respondents to each question 40
Time series – Ortho imagery
Vicinity of Raleigh-Durham International Airport 1993-2002
Note: Percentages based on the actual number of
respondents to each question 41
Risks to Digital Geospatial Data
Producer focus on current data
“Kill and fill”, absence of time-versioned content
Future support of data formats in question
Vast range of data formats in use--complex
Shift to “streaming data” for access
Archives have been a by-product of providing access
Preservation metadata requirements
Descriptive, administrative, technical, DRM
Geodatabases
Complex functionality
Note: Percentages based on the actual number of
respondents to each question 42
NC Geospatial Data Archiving Project
(NCGDAP)
Partnership between university library (NCSU) and
state agency (NCCGIA)
Focus on state and local geospatial content in North
Carolina (state demonstration)
Tied to NC OneMap initiative
Part of Library of Congress National Digital
Information Infrastructure & Preservation Program
(NDIIPP)
Objective: engage existing state/federal geospatial
data infrastructures in preservation
Note: Percentages based on the actual number of
respondents to each question 43
NCGDAP Philosophy of Engagement
Take the data
as in the manner
In which it can
be obtained
Provide feedback
to producer
organizations/
inform state
geospatial
infrastructure
Wrangle
and archive
data
Note the ‘Project’ in ‘North Carolina Geospatial Data Archiving
Project’– the process, the learning experience, and the engagement
with geospatial data infrastructures are more important than the archive
Note: Percentages based on the actual number of
respondents to each question 44
Earlier NCSU Acquisition Efforts
NCSU University Extension project 2000-2001
Target: County/city data in eastern NC
“Digital rescue” not “digital preservation”
Hurricane Floyd flood response
Project learning outcomes
Confirmed concerns about long term access
Need for efficient inventory/acquisition
Wide range in rights/licensing
Need to work within statewide infrastructure
Note: Percentages based on the actual number of
respondents to each question 45
Big Geoarchiving Challenges
Format migration paths
Management of data versions over time
Preservation metadata
Harnessing geospatial web services
Preserving cartographic representation
Keeping content repository-agnostic
Preserving geodatabases
More …
Note: Percentages based on the actual number of
respondents to each question 46
Vector Data Format Issues
Vector data much more complicated than image data
‘Archiving’ vs. ‘Permanent access’
An ‘open’ pile of XML might make an archive, but if using it
requires a team of programmers to do digital archaeology then it
does not provide permanent access
Piles of XML need to be widely understood piles
GML: need widely accepted application schemas (like OSMM?)
The Geodatabase conundrum
Export feature classes, and lose topology, annotation,
relationships, etc.
… or use the Geodatabase as the primary archival platform
(some are now thinking this way)
Note: Percentages based on the actual number of
respondents to each question 47
Managing Time-versioned Content
Many local agency data layers continuously
updated
E.g., some county cadastral data updated daily—
older versions not generally available
Individual versioned datasets will wander off
from the archive
How do users “get current metadata/DRM/object”
from a versioned dataset found “in the wild”?
How do we certify concurrency and agreement
between the metadata and the data?
Note: Percentages based on the actual number of
respondents to each question 48
Preservation Metadata Issues
FGDC Metadata
Many flavors, incoming metadata needs processing
Cross-walk elements to PREMIS, MODS?
Metadata wrapper
METS (Metadata Encoding and Transmission
Standard) vs. other industry solutions
Need a geospatial industry solution for the ‘METS-
like problem’
GeoDRM a likely trigger—wrapper to enforce
licensing (MPEG 21 references in OGIS Web
Services 3)
Note: Percentages based on the actual number of
respondents to each question 49
Preserving Cartographic Representation
The true counterpart of the old map is not the GIS
dataset, but rather the cartographic representation that
builds on that data:
Intellectual choices about symbolization, layer combinations
Data models, analysis, annotations
Cartographic representation typically encoded in
proprietary files (.avl, .lyr, .apr, .mxd) that do not lend
themselves well to migration
Symbologies have meaning to particular communities at
particular points in time, preserving information about
symbol sets and their meaning is a different problem
Note: Percentages based on the actual number of
respondents to each question 50
Preserving Cartographic Representation
Note: Percentages based on the actual number of
respondents to each question 51
Interest in how geospatial content interacts with
widely available digital repository software
Focus on salient, domain-specific issues
Challenge: remain repository agnostic
Avoid “imprinting” on repository software environment
Preservation package should not be the same as the
ingest object of the first environment
Tension between exploiting repository software
features vs. becoming software dependent
Repository Architecture Issues
Note: Percentages based on the actual number of
respondents to each question 52
Preserving Geodatabases
Spatial databases in general vs. ESRI Geodatabase
“format”
Not just data layers and attributes—also topology,
annotation, relationships, behaviors
ESRI Geodatabase archival issues
XML Export, Geodatabase History, File Geodatabase,
Geodatabase Replication
Growing use of geodatabases by municipal, county
agencies
Some looking to Geodatabase as archival platform
(in addition to feature class export)
Note: Percentages based on the actual number of
respondents to each question 53
Geodatabase Availability
According to the 2003 Local Government GIS Data
Inventory, 10.0% of all county framework data and
32.7% of all municipal framework data were managed
in that format.
Cities: Street Centerline Formats
Geodatabase
Shapefile
Coverage
Other
Counties: Street Centerline Formats
Geodatabase
Shapefile
Coverage
Other
Note: Percentages based on the actual number of
respondents to each question 54
Harnessing Geospatial Web Services
Automated content identification
‘capabilities files,’ registries, catalog services
WMS (Web Map Service) for batch extraction of
image atlases
last ditch capture option
preserve cartographic representation
retain records of decision-making process
… feature services (WFS) later.
Rights issues in the web services space are
ambiguous
Note: Percentages based on the actual number of
respondents to each question 55
Questions?
Contact:
Steve Morris
Head, Digital Library Initiatives
NCSU Libraries
Steven_Morris@ncsu.edu

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Oportunidades geospatial information new space

  • 1. Map Portals and Geoarchiving: New Opportunities in Geospatial Information Services Steve Morris Head of Digital Library Initiatives NCSU Libraries GIS Technology: Sustaining the Future & Understanding the Past Case Western Reserve University October 13, 2005
  • 2. Note: Percentages based on the actual number of respondents to each question 2 Overview Brief overview of library roles in digital geographic information services Geospatial web services: opportunities and challenges for libraries Long-term preservation of digital geospatial data
  • 3. Note: Percentages based on the actual number of respondents to each question 3 Library Geospatial Data Services: Data Collections Acquire data (licensed and public domain) License data for in-library or campus use Provide networked access Acquire or create value- added derivatives
  • 4. Note: Percentages based on the actual number of respondents to each question 4 Library Geospatial Data Services: Discovery Tools Web documentation Author and publish metadata Searchable metadata catalogs Integrate data into library catalog
  • 5. Note: Percentages based on the actual number of respondents to each question 5 Library Geospatial Data Services: Reference and Technical Support Assistance with finding and selecting data GIS “reference interview” Line between reference support and technical support is extremely fuzzy Support or administration of campus GIS software licenses Reference support for locating software tools (e.g. scripts for ArcView and ArcGIS)
  • 6. Note: Percentages based on the actual number of respondents to each question 6 Library Geospatial Data Services: Workshops and Outreach In-library workshops and class visits Online workshops (Virtual Campus) Marketing and Outreach Work to engage broader number of academic departments in GIS activity Work to lower barrier to entry in GIS work (access to software, data, training, support) Library as ‘neutral ground’ well suited to coordinate with campus GIS infrastructure
  • 7. Note: Percentages based on the actual number of respondents to each question 7 Map Collections Data Collections Map Servers Map Portals Library Geospatial Data Services Timeline Map Collections Paper Maps Data Collections CD-ROMs, File server & FTP access Map Servers Integrate collected data, Web-based mapping Map Portals Integrate distributed, streaming data
  • 8. Note: Percentages based on the actual number of respondents to each question 8 NC Local Government Map Services # # # # # # # # # # # # # # # # # # # # # # # # # # # # # # # County Map Services # City Map Services
  • 9. Note: Percentages based on the actual number of respondents to each question 9 County Government Map Server
  • 10. Note: Percentages based on the actual number of respondents to each question 10 State Government Map Server
  • 11. Note: Percentages based on the actual number of respondents to each question 11 Federal Government Map Server
  • 12. Note: Percentages based on the actual number of respondents to each question 12 Open Geospatial Consortium (OGC) Technology Overview The Open Geospatial Consortium (OGC) is a not-for- profit, international consortium: focus on data interoperability Operates a Specification Development Program that is similar to other Industry consortia (W3C, etc.) Also operates an Interoperability Program (IP), a partnership-driven engineering and testing program designed to deliver proven specifications into the Specification Development Program. OGC used to talk about “web-enabling GIS”, now they talk about “geo-enabling the web.”
  • 13. Note: Percentages based on the actual number of respondents to each question 13 National Approaches USGS National Map Integrated WMS services Services catalog Geospatial One-Stop Searchable services Specialized Portals FEMA Mapping Katrina Portal HUD E-Maps
  • 14. Note: Percentages based on the actual number of respondents to each question 14 State Approach: NC OneMap Data integration through OGC specifications (currently just WMS) Data sharing agreements Metadata outreach Ongoing data inventories Practices and guidelines vis-à-vis map service configuration
  • 15. Note: Percentages based on the actual number of respondents to each question 15
  • 16. Note: Percentages based on the actual number of respondents to each question 16
  • 17. Note: Percentages based on the actual number of respondents to each question 17
  • 18. Note: Percentages based on the actual number of respondents to each question 18
  • 19. Note: Percentages based on the actual number of respondents to each question 19
  • 20. Note: Percentages based on the actual number of respondents to each question 20 Geospatial Web Service Types Image services Deliver image resulting from query against underlying data Limited opportunity for analysis Feature services Stream actual feature data, greater opportunity for data analysis Other Geocoding services Routing .etc.
  • 21. Note: Percentages based on the actual number of respondents to each question 21 Geospatial Web Services: Advantages Time- and location-independent access Access to extremely large datasets Access to most current data Ad hoc access to data for which there is typically low demand Reduce barriers imposed by differences in formats, coordinate systems, etc. Access to geoprocessing functionality
  • 22. Note: Percentages based on the actual number of respondents to each question 22
  • 23. Note: Percentages based on the actual number of respondents to each question 23
  • 24. Note: Percentages based on the actual number of respondents to each question 24
  • 25. Note: Percentages based on the actual number of respondents to each question 25 Geospatial Web Services: Shortcomings Application performance will frequently not match that of locally loaded data Up-time reliability issues Many demonstration services, persistence is open to question Dynamically changing content can lead to analysis surprises Does not replace aesthetic value of paper map
  • 26. Note: Percentages based on the actual number of respondents to each question 26 Geospatial Web Services: When Most Useful? User needs most current data Data is subject to frequent change & update User needs access to extremely large datasets User wishes to preview data prior to use User just needs background display Need to integrate data into portable devices Data not otherwise available
  • 27. Note: Percentages based on the actual number of respondents to each question 27 Geospatial Web Services: Integration Challenges for Libraries Services difficult to discover and select from In case of commercial services, campus licensing models not well evolved Linking data objects with services that act upon them is not well supported by existing metadata and catalog schemes Ambiguous rights issues How to integrate into the physical browse environment of the map library?
  • 28. Note: Percentages based on the actual number of respondents to each question 28 Accessible ArcXML Services Geospatial Web Services Rights Issues Example: Desktop GIS-accessible ArcIMS 39 of 100 NC counties have desktop GIS-accessible ArcIMS services It is difficult to know how many of these counties actually expect users to either: A) access data through desktop GIS for viewing only, or B) extract and download data
  • 29. Note: Percentages based on the actual number of respondents to each question 29 Geospatial Data: Discovery and Selection Issues Data extent Thematic content & attributes Currency Format, coordinate system, datum, etc. Licensing restrictions Ease of access Metadata availability More …
  • 30. Note: Percentages based on the actual number of respondents to each question 30 Geospatial Web Services: Discovery and Selection Issues Inherits many data selection issues such as coordinate system, etc. Service type: image, feature, geocoding, … Access protocol: OGC specs (WMS, WFS, WCS …), SOAP, ArcXML (ArcIMS image and feature services, specialized APIs (e.g. Google Maps) Reliability, up-time performance, speed Licensing scheme Functions: annotation, saved maps, etc. Image services: image formats
  • 31. Note: Percentages based on the actual number of respondents to each question 31 Facilitating Discovery of Services: Example: Directory of County Map Services Among top 15 most used resources on library web site 99.5% of directory users from outside ncsu.edu
  • 32. Note: Percentages based on the actual number of respondents to each question 32 Library Opportunities to Provide Geospatial Web Services Publish WMS servers from public domain content not already available Fill holes in service availability Publish archival content counter bias towards current content in the industry Publish cascading map services Create specialized front-ends to existing, distributed services
  • 33. Note: Percentages based on the actual number of respondents to each question 33 Cascading Map Services: Problems Different versions of OGC standards e.g., WMS 1.1.0, WMS 1.1.1 … Differences in layer naming ‘cadastral’ vs. ‘parcels’ vs. ‘property boundaries’ Differences in classification schemes e.g., inconsistent land use, zoning schemes Service reliability, addressing stability, uptime On top of standards & specifications, need community overlay of best practices
  • 34. Note: Percentages based on the actual number of respondents to each question 34 Community Practices in Cascading Map Services Example: Layer Names, Symbology, Classification
  • 35. Note: Percentages based on the actual number of respondents to each question 35 “Web mash-ups” and the New Mainstream Geospatial Web Services New services such as Google Maps, MSN Virtual Earth, Yahoo Maps Static, tiled images for efficient access API’s for developer access Positioning for mobile device-oriented application development Engaging mainstream IT and general public AJAX: Asynchronous Javascript and XML New forms of map and service publishing
  • 36. Note: Percentages based on the actual number of respondents to each question 36 Integrating Traditional Geospatial Data and Services with New Services
  • 37. Note: Percentages based on the actual number of respondents to each question 37 Integrating Traditional Geospatial Data and Services with New Services But who preserves the data …?
  • 38. Note: Percentages based on the actual number of respondents to each question 38 Today’s geospatial data as tomorrow’s cultural heritage
  • 39. Note: Percentages based on the actual number of respondents to each question 39 Time series – vector data Parcel Boundary Changes 2001-2004, North Raleigh, NC
  • 40. Note: Percentages based on the actual number of respondents to each question 40 Time series – Ortho imagery Vicinity of Raleigh-Durham International Airport 1993-2002
  • 41. Note: Percentages based on the actual number of respondents to each question 41 Risks to Digital Geospatial Data Producer focus on current data “Kill and fill”, absence of time-versioned content Future support of data formats in question Vast range of data formats in use--complex Shift to “streaming data” for access Archives have been a by-product of providing access Preservation metadata requirements Descriptive, administrative, technical, DRM Geodatabases Complex functionality
  • 42. Note: Percentages based on the actual number of respondents to each question 42 NC Geospatial Data Archiving Project (NCGDAP) Partnership between university library (NCSU) and state agency (NCCGIA) Focus on state and local geospatial content in North Carolina (state demonstration) Tied to NC OneMap initiative Part of Library of Congress National Digital Information Infrastructure & Preservation Program (NDIIPP) Objective: engage existing state/federal geospatial data infrastructures in preservation
  • 43. Note: Percentages based on the actual number of respondents to each question 43 NCGDAP Philosophy of Engagement Take the data as in the manner In which it can be obtained Provide feedback to producer organizations/ inform state geospatial infrastructure Wrangle and archive data Note the ‘Project’ in ‘North Carolina Geospatial Data Archiving Project’– the process, the learning experience, and the engagement with geospatial data infrastructures are more important than the archive
  • 44. Note: Percentages based on the actual number of respondents to each question 44 Earlier NCSU Acquisition Efforts NCSU University Extension project 2000-2001 Target: County/city data in eastern NC “Digital rescue” not “digital preservation” Hurricane Floyd flood response Project learning outcomes Confirmed concerns about long term access Need for efficient inventory/acquisition Wide range in rights/licensing Need to work within statewide infrastructure
  • 45. Note: Percentages based on the actual number of respondents to each question 45 Big Geoarchiving Challenges Format migration paths Management of data versions over time Preservation metadata Harnessing geospatial web services Preserving cartographic representation Keeping content repository-agnostic Preserving geodatabases More …
  • 46. Note: Percentages based on the actual number of respondents to each question 46 Vector Data Format Issues Vector data much more complicated than image data ‘Archiving’ vs. ‘Permanent access’ An ‘open’ pile of XML might make an archive, but if using it requires a team of programmers to do digital archaeology then it does not provide permanent access Piles of XML need to be widely understood piles GML: need widely accepted application schemas (like OSMM?) The Geodatabase conundrum Export feature classes, and lose topology, annotation, relationships, etc. … or use the Geodatabase as the primary archival platform (some are now thinking this way)
  • 47. Note: Percentages based on the actual number of respondents to each question 47 Managing Time-versioned Content Many local agency data layers continuously updated E.g., some county cadastral data updated daily— older versions not generally available Individual versioned datasets will wander off from the archive How do users “get current metadata/DRM/object” from a versioned dataset found “in the wild”? How do we certify concurrency and agreement between the metadata and the data?
  • 48. Note: Percentages based on the actual number of respondents to each question 48 Preservation Metadata Issues FGDC Metadata Many flavors, incoming metadata needs processing Cross-walk elements to PREMIS, MODS? Metadata wrapper METS (Metadata Encoding and Transmission Standard) vs. other industry solutions Need a geospatial industry solution for the ‘METS- like problem’ GeoDRM a likely trigger—wrapper to enforce licensing (MPEG 21 references in OGIS Web Services 3)
  • 49. Note: Percentages based on the actual number of respondents to each question 49 Preserving Cartographic Representation The true counterpart of the old map is not the GIS dataset, but rather the cartographic representation that builds on that data: Intellectual choices about symbolization, layer combinations Data models, analysis, annotations Cartographic representation typically encoded in proprietary files (.avl, .lyr, .apr, .mxd) that do not lend themselves well to migration Symbologies have meaning to particular communities at particular points in time, preserving information about symbol sets and their meaning is a different problem
  • 50. Note: Percentages based on the actual number of respondents to each question 50 Preserving Cartographic Representation
  • 51. Note: Percentages based on the actual number of respondents to each question 51 Interest in how geospatial content interacts with widely available digital repository software Focus on salient, domain-specific issues Challenge: remain repository agnostic Avoid “imprinting” on repository software environment Preservation package should not be the same as the ingest object of the first environment Tension between exploiting repository software features vs. becoming software dependent Repository Architecture Issues
  • 52. Note: Percentages based on the actual number of respondents to each question 52 Preserving Geodatabases Spatial databases in general vs. ESRI Geodatabase “format” Not just data layers and attributes—also topology, annotation, relationships, behaviors ESRI Geodatabase archival issues XML Export, Geodatabase History, File Geodatabase, Geodatabase Replication Growing use of geodatabases by municipal, county agencies Some looking to Geodatabase as archival platform (in addition to feature class export)
  • 53. Note: Percentages based on the actual number of respondents to each question 53 Geodatabase Availability According to the 2003 Local Government GIS Data Inventory, 10.0% of all county framework data and 32.7% of all municipal framework data were managed in that format. Cities: Street Centerline Formats Geodatabase Shapefile Coverage Other Counties: Street Centerline Formats Geodatabase Shapefile Coverage Other
  • 54. Note: Percentages based on the actual number of respondents to each question 54 Harnessing Geospatial Web Services Automated content identification ‘capabilities files,’ registries, catalog services WMS (Web Map Service) for batch extraction of image atlases last ditch capture option preserve cartographic representation retain records of decision-making process … feature services (WFS) later. Rights issues in the web services space are ambiguous
  • 55. Note: Percentages based on the actual number of respondents to each question 55 Questions? Contact: Steve Morris Head, Digital Library Initiatives NCSU Libraries Steven_Morris@ncsu.edu