ANALYTICAL TOOLS AND PROCEDURES FOR GEOINFORMATION PROCESSING
J.A.R. BLAIS
Department of Surveying Engineering
The University of Calgary
Calgary, Alberta, Canada
ABSTRACT
With the rapidly evolving possibilities in computations and visualization as a consequence of tremendous changes in computer
technology, the processing of geoinformation can be increasingly automated with adaptive procedures in varied applications.
Selecting appropriate methodologies usually involves dealing with incomplete information while minimizing the necessary
assumptions. One general approach which has proven successful in very different applications is using information theory. Practical
applications of information theory in spectrum estimation, adaptive filter design and inverse problems will illustrate the potential for
other similar applications. General conclusions and recommendations will be included.
1. INTRODUCTION
Fundamental changes are taking place in positioning, mapping
and related fields. Angle and distance measurements are being
supplemented and replaced by the recording of observations
from satellites, accelerometer systems and gyroscopes along
with frequency standards for digital signal processing. Analog
photographs are rapidly becoming obsolete with digital imaging
systems and mapping operations integrated into geographical
and more generally spatial information systems. Visualization
systems will soon replace conventional topographical maps with
terrain rendering and spatial information display systems. These
fundamental changes have far reaching implications for the
analytical tools and procedures which are necessary in the data
processing of observations and measurements.
The advent of modern computer technology with the ever
increasing computing power and availability also has profound
implications in the selection of tools and procedures. In
particular, algorithms are becoming more sophisticated and
adaptive procedures are most often desired in view of
automating the processing of observations and measurements.
The increasing sophistication has led to dealing with patterns,
trends and the like in order to have adaptive procedures. These
tendencies are really leading to information processing in
general and even knowledge processing in specialized
application areas.
Among the outstanding questions in this field of geoinformation
processing are the identification and recognition of patterns, the
quantification of information contents for adaptive processing
and quality control, and inference procedures that can transcend
the data processing requirements. In other words, what are the
new requirements in terms of tools and procedures for
geoinformation processing that will lead to the knowledge-
based systems of the near future?
The following discussion will first consider the mathematical
differences between data, information and knowledge, and then
the relationships between accuracy, uncertainty and semantics.
These concepts have important implications for the
understanding of what is needed in categorizing and
characterizing the analytical tools and procedures for
geoinformation processing. As distinct from data processing,
information processing deals with adaptive methods of filtering,
pattern extraction and processing, dealing with incomplete
information for decision support and other applications.
A brief overview of information theory which has proven very
appropriate for quantifying information contents and
categorizing patterns and structures will be given. Examples
from three areas of applications will be discussed to illustrate
the use of information theoretical principles in those contexts.
General conclusions and recommendations will be included as
guidelines for other areas of potential applications.
2. FROM DATA TO INFORMATION
Observations and measurements are well known to provide little
information unless they are properly designed and adequately
carried out. This clearly illustrates that data do not always imply
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substantial or significant information and hence proper
strategies and analyses are required. Among the principal
objectives of geoinformation processing, the extraction of
useful information from available data ranks very high and
much research and development efforts have been invested in
various application fields. However, fundamental questions
remain about the nature of information and its quantification or
measure to decide on optimal data and information processing
strategies for all kinds of applications.
In the case of distance and angle data processing for positioning
purposes, the analysis is definitely simpler than when dealing
with pattern identification and recognition in digital image
processing. Accuracy and reliability in survey networks are well
understood but the analogous concepts with digital imagery and
spatial information are definitely more complex. With the
current emphasis on spatial information systems (SIS), these
questions are becoming more and more important and further
investigations are definitely warranted.
Data are observations or measurements that are collected in
order to extract some required or expected information and
knowledge. Data processing using conventional algorithmic
methods is well understood in physical science and engineering.
Accuracy considerations are usually taken into account in the
data processing to reflect the quality of observation and
measurement procedures, the numerical techniques and related
operations. The derived quantities are then categorized in terms
of accuracy and reliability.
Information usually refers to patterns, features and the like that
are normally extracted from observation and measurement data
through processing. Explicit interpretations are not normally
included in such patterns and tendencies as these can easily be
context or application dependent. For instance, the estimation of
a linear or quadratic trend between two data sequences does not
necessarily include any interpretation of the inferences for the
variables in question. Hence mathematical information can be
considered as abstractions or derivations from data without
including any semantics. Information processing in the
mathematical sense is logical pattern and similar processing that
would take any uncertainty or incompleteness of the information
into consideration.
Knowledge would then refer to context dependent information
or interpretations that are common in reasoning like processing.
In other words, spatial information patterns and trends generally
have different interpretations and implications for different
classes of users of the information. For example, a linear or
quadratic trend between two variables can be the object of
numerous interpretations. Knowledge processing involves
facts, rules and procedures that often come from learning
experience in some specific context or environment. Knowledge
acquisition, representation and processing are among the
outstanding research topics in knowledge based system design
and implementation.
In terms of abstraction and complexity, information processing
problems range from data processing algorithmic problems to
knowledge related questions. The sequel will only consider the
selection and analysis of appropriate analytical tools and