Title: The National Map, Geospatial Ontology, and the Semantic Web
1The National Map, Geospatial Ontology,and the
Semantic Web
E. Lynn Usery
usery_at_usgs.gov
http//cegis.usgs.gov
2Outline
- Background The National Map
- The National Map Ontology
- A case of a Geospatial Ontology
- Implementing The National Map on the Semantic Web
3 The National Map
- The National Map is a collaborative effort to
improve and deliver topographic information for
the nation - The goal of The National Map is to become the
nations source for trusted, nationally
consistent, integrated and current topographic
information available online for a broad-range of
uses
4The National Map Vision
- A seamless, continuously maintained, nationally
consistent set of base geographic data - Developed and maintained through partnerships
- A national foundation for science, land and
resource management, recreation, policy making,
and homeland security - Available over the Internet
- The source for revised topographic maps
5The National Map
The National Map contributes to the NSDI The
National Map includes eight data layers
transportation, structures, orthoimagery,
hydrography, land cover, geographic names,
boundaries, and elevation
Public domain data to support USGS topographic
maps at 124,000-scale Products and services at
multiple scales and resolutions Analysis,
modeling and other applications at multiple
scales and resolutions The National Map is built
on partnerships and standards
6The 8 Layers of The National Map
Transportation Structures Orthoimagery Hydrography
Land Cover Geographic Names Boundaries Elevation
7Nationwide Coverage 8 Data Layers
8Generalization
Multiscale
Nationwide Coverage 8 Data Layers
Authoritative Data Source
Integrated Data
9Feature/Event Based
User-Centered Design
OntologyDriven
E-Topo Maps
Generalization
Multiscale
Nationwide Coverage 8 Data Layers
Authoritative Data Source
Integrated Data
Quality Aware
Spatio-Temporal
Intelligent Knowledge Base Semantics-driven
10TNM Progression Transitions
11Products of The National Map
- Data display through The National Map viewer
- New viewer, Palanterra, joint development from
NGA, ESRI, and USGS - Viewer goes public Dec 3, 2009
- Data download of 8 layers
- Topographic maps, 14,000 available now from USGS
Map Store, 3-year revision cycle - New topographic map goes public Dec 3, 2009
Example map, Altamont, Kansas - Digital, georeferenced versions of all previous
topographic maps for a specified 7.5-minute area
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13Ontology for The National Map
14Feature Domains
- Events
- Divisions
- Built-up areas
- Ecological regime
- Surface water
- Terrain
- Domains derived from ground surveys incorporated
in DLG standards
15Terrain includes 58 USGS landform features
16Ecological Regime
- Tundra
- Desert
- Grassland
- Scrub
- Forest
- Pasture
- Cultivated Cropland
- Transition area
- Nature reserve
17Surface Water
18Built-up
19Divisions
20Events
21Ontology implementation
- Classes established for all domain-level
ontologies - Glossary of definitions from classes
- Establishing axioms (in progress)
- Spatial relations
- Working on predicates some from OGC
- Identifying which predicates are needed, which
are in OGC, and which ones work
22Spatial Relations
- Some relations are inherent in the class, e.g.,
bridge implies crossing - Most are applied when instances are integrated
23Geographical Scale
- Ontological problem
- Geographic features exist in reality, but reality
cannot be separated from the observer - Ontology instances are consistent granularity
- Quantification of scale in representation
24Application
- For The National Map, integrate ontology with the
database schemas - Each layer has a schema
- Best Practices Data Model (transportation,
structures, boundaries) - NHD data model for hydrography
- Features from raster data in work
- For example, terrain features from DEM and
images - Ecological regimes?
-
25Task ontologies
- User interface
- Data integration
- Generalization
- Map design and creation
26Developing a Semantic Data Model?
- Current research
- Moving from existing Best Practices, NHD, and
raster data models to the Semantic Web - Can database conversions to Semantic Web
accomplish this objective?
27Converting geospatial databases to the Semantic
Web
- GNIS already loaded in RDF
- Converting Oracle databases in NHD and Best
Practices data models to RDF, RDFS, OWL, and
other standards - Developing feature/event-based semantic data model
28Scenarios for use of The National Map in 2015
29Information Access and Dissemination
Wildfires are spreading rapidly across a San
Diego mountainside. Fire fighters have deployed
with two-way radios and Global Positioning
Systems (GPS). In the command center, the new 3-D
topographic maps overlaid with near real-time
airborne color-infrared thermal imagery,
real-time GPS wireless sensor data, and National
Weather Service maps of wind direction,
precipitation potential, and temperature
displayed on the computers allow the command
center team to tell the fire fighters through
their two-way radios where the wildfire
boundaries are and help them estimate the likely
fire spread directions and speed in the next two
hours. The operators at the command center find
it intuitive to toggle between the various layers
of data to analyze the situation, and can select
different combinations to produce PDF files for
fast printing to distribute to the crews.
Meanwhile, the GPS and wireless communication
enable the transmission of the position of the
crew back to the command center, which has a
large screen to display the overview maps with
current positions of all firefighters and current
fire perimeters. With a comprehensive GIS
modeling technology and the information provided
from The National Map (topography, slope, aspect,
weather, soil moisture, vegetation, etc.), the
command and control center calculates potential
dangers for firefighters and immediately
distributes a warning to the crews on the west
side of the mountain to relocate 300 m farther
west. Based on information from the overview
maps, the center also dispatches another crew to
the highest-risk zone and moves two more toward
that zone. Their earlier participation in design
phases are paying off in powerful but easy to use
geospatial tools in a frantic and hostile
environment.
30Integration of Data from Multiple Sources
- The San Diego fire is not yet contained. The crew
assesses the current boundary of the fire,
overlaid on the topographic map, which explains
the difficulty of containing the spread up slope
however, there is still the unexplained spread to
the east. The crew accesses the National Weather
Service wind forecast, which is provided at a
scale of 1125,000 compared to the topographic
map at 124,000. The crew invokes a tool for
generalization of the topographic map to the
smaller scale weather data, and a trend emerges.
To determine high priority targets, the crew
calls up an address directory and uses simple
controls to geocode the addresses spatially on
the fire map, showing location of structures in
the fires path. To understand possible paths to
fire sites, another layer with roads and another
with trails are spatially matched (conflated)
with the generalized map of topography. Finally,
a remote sensing image with vegetation types is
fused with the other layers to determine
potential fuel loads for the fire path.
31Data Models and Knowledge Organization Systems
- A California regional dispatch operator gets a
call about a new fire that has just been spotted
in Sycamore Canyon. The caller further indicates
that the fire is moving quickly up the west face
of the canyon. The dispatcher does not know
Sycamore Canyon or its location. Using a local
geographic region profile to search the online
The National Map, the dispatcher enters Sycamore
Canyon and obtains a coordinate footprint of the
canyon from The National Map Gazetteer. Using the
returned footprint, the dispatch system zooms to
the canyons location. The dispatcher selects an
option within The National Map portal that uses
the canyon footprint to automatically query
geospatial databases housed in several different
locations to obtain information on roads,
streams, land cover, houses, and fire hydrants
within the canyon. In addition, the dispatcher is
able to select a 3D image of the canyon terrain
that is offered as part of the initial query
results. The dispatcher clicks the west wall of
the canyon to select it and adds annotation that
the fire was sighted moving rapidly up this face.
The National Map portal seamlessly integrates the
retrieved streams, roads, houses, and land cover
onto the 3D display and the dispatcher sends the
assembled dataset to the fire control and command
center. With this information in hand, an
emergency response team departs only minutes
after the call was received.
32Addressing the Presented Scenario
- Immediate access to information based on common
place name - Intuitive user interface, semantically-driven
- Automated generalization and data integration
(fusion, conflation) - Explicit representation of a landform feature
(canyon) as a queryable object in the database,
and explicit definition - Representation of landform feature parts as
objects (canyon wall) - Quality data on feature basis
- Space and time changes incorporated
- Features changed on transaction basis
- Semantics driven query and access
33Research needed to make the scenario possible
from The National Map
- Geographic feature ontologies (hydrography,
transportation, structures, boundaries, land
cover, terrain, and image) - Semantic geographic data models based on features
and events from these ontologies, and an
associated gazetteer replacing the Geographic
Names Information System (GNIS) - Ontology-driven generalization, data integration,
user-interfaces, map generation - Ontology-driven semantic data models for quality
aware features and events supporting time,
change, and semantics-driven transactions
34Workshop concepts addressing needs of Ontology
and Semantics of The National Map
- Region Connection Calculus (RCC) in the Web
Ontology Language (OWL) augmented by DL-safe
rules is used in order to represent
spatio-thematic knowledge - Semi-automated semantic process for feature
conflation that solves the type-matching problem
using ontologies to determine similar feature
types, and then uses business rules to automate
the merge of geospatial features - Generic categories to model the purpose of
geography-related ontologies
35Workshop concepts addressing needs of Ontology
and Semantics of The National Map
- Semantic Enablement Layer for OGC Web services
- Tight Integration between space and semantics
- What activity is allowed here? Spatial planning
with semantics - Designing a geo-spatial application addressed to
final-users and based on Semantic Web - 2D geospatial indexing for proximity queries,
extending to 3D and 4D to support moving objects
(MOBs)
36The National Map, Geospatial Ontology,and the
Semantic Web
E. Lynn Usery
usery_at_usgs.gov
http//cegis.usgs.gov