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IMAGE PROCESSING AND GIS TOOLS
FOR FEATURE AND CHANGE EXTRACTION
Costas Armenakis* and Florin Savopol
Natural Resources Canada (NRCan)
Centre for Topographic Information (CTI), Geomatics Canada
615 Booth Str., Ottawa, Ontario, Canada K1A OE9
{armenaki, fsavopol} @NRCan.gc.ca
Commission IV, WG IV/7
KEY WORDS: Mapping, Acquisition, Extraction, Change, Revision, Semi-Automation
ABSTRACT:
Currently the Centre for Topographic Information, Geomatics Canada, NRCan is involved in issue-based programs, such as the
Geomatics for Northern Development and the Reducing Canada's Vulnerability to Climate Change. As in many mapping
organizations, the projects within these programs expect the delivery of geospatial data and information in much shorter time periods
compared to operations in the past due to the external pressures and the availability of new data sources and technology. This
increasing demand for delivery in shorter time imposes a need for rapid approaches for the extraction of topographic features and the
detection of landscape changes from imagery. Considering the continuous dwindling of resources, the implementation of higher level
of automation in the mapping operations is highly desirable to reduce both the production time and the cost involved, especially
when dealing with the vast size of the Canadian territory. To implement rapid processes for mapping operations, such as feature
recognition, feature extraction and change detection we have considered the possibilities offered by a) the new kinds of data sources
and especially the availability of panchromatic and multispectral digital data; and b) the tools and techniques available in image
processing (IP) and GIS packages respectively and how these tools can be used to accelerate the execution of mapping operations.
Two case studies, one of which includes the application of CTI's semi-automated change detection approach, are presented to
demonstrate the potential, applicability and usefulness of this approach.
1. INTRODUCTION
The Centre for Topographic Information, Geomatics Canada,
Natural Resources Canada is involved in issue-driven
initiatives, such as the Geomatics for Northern Development
Program and the Reducing Canada's Vulnerability to Climate
Change Program. Certain projects under these programs
conduct acquisition, revision, and monitoring operations for
spatial data. Consequently, we require to deal with three main
mapping functions: a) the recognition of features, b) the
extraction of features, and c) the change detection including
correction to existing features. All require extensive human
involvement, as they are time consuming operations.
Nowadays, the delivery of geospatial data and information is
expected in much shorter time periods compared to the past.
This is due to expectations generated by the availability of new
technology and new data types and sources. Considering the
continuous dwindling resources (human, budgets) and the vast
size of the Canadian territory, there is a need to implement rapid
mapping approaches to reduce both the production time and the
cost involved. These approaches require not only revisiting of
the current processes but most important the implementation of
higher level of automation in the mapping operations.
Automation for geo-spatial operations, such as feature
extraction and change detection has been the “pursue of the
*
Corresponding author
611
holy grail" in photogrammetry, remote sensing and spatial
information sciences. While we may never achieve complete
automated systems and operations, significant progress has been
made for various processes under certain conditions and with
specific data types (e.g., Heipke and Straub, 1999; Baltsavias,
2004; Zhang, 2004). This has been leading to some automated
operations but mostly to various semi-automated approaches or
to tools that can support various semi-automated processes.
An important factor affecting these operations is the high
heterogeneity of data and data sources. Data can be vector or
raster type, their sources could be geodatabases, raster maps,
airborne and/or spaceborne images with various spatial and
radiometric resolutions and multi-temporal in nature. Therefore,
certain processing is required to normalize the data and bring
them under a common work domain, either at the data level or
at the information level (Armenakis et al., 2003). In addition,
higher levels of automation can be achieved when there is
thematic homogeneity and the operations are feature dependent.
In this paper we will identify a range of tools and techniques
available in the functionality of geographic information systems
(GIS) and the image processing (IP) packages, which can be
applied usually in combined modes to accelerate the three main
operations of feature recognition, feature extraction and change
detection. Two case studies are then presented to demonstrate
the applicability of several of these tools in mapping operations.