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A topographic map is an important source of information for geospatial planning and analysis.
Apart from conventional uses, nowadays topographic maps have been extensively used for the
development of automated Geo-information system including GIS and decision support
system. These mostly rely on the topographic map to obtain geographic information, location
details, the extent of urban area and landscape analysis, etc. The information of interest to any
geospatial application requires being extracted from topographic maps. At present, extraction
of information is being carried out through manual digitization or semiautomated methods
which require expertise and human intervention. Also, these approaches are slow and error
prone. Hence, there is great need to automate extraction of information from the topographic
map.
Few systems have been developed for the interpretation of topographic map, but the
approaches are insufficient to automatically extract geospatial information and are incapable
of understanding the topographic map. The research work as done so far not lead to a precise
formulation of the map objects description and classification. Most of the map interpretation
systems emphasize particular coherent organization of maps or raster to vector conversion
process. To provide a solution for the manual digitization and to access the topographic map
information efficiently, sophisticated approaches for semi-automatic selective map
interpretation have been reported by many researchers. The proposed approaches yield good
recognition rates for the well-isolated objects of interests. Few existing systems have dealt
with the problems of recognition of limited map objects, but most of them have confined the
scope of research for linear object's reconstruction and recognition. Most of the systems have
not considered extraction of geospatial information.
The topographic maps are quite complex. Complexity is due to color ambiguity,
spatial ambiguity and pattern indiscrimination present in the topographic map. Existing
approaches have not provided any robust framework for handling color information and
pattern indiscriminate present in a topographic map. However, the human map reader is
excellent in pattern recognition. Hence, the topographic map understanding approach must be
more natural to conceive based on the humanistic approach rather than recognizing edges,
object boundaries and syntactic arrangement of structure primitives. Hence, a generalized
framework has been needed to handle the high variability of graphical content displayed on
the topographic map. Data or information capturing by a human is quite efficient. But human
understanding may get bias due to inconsistencies. In contrast, computers are more deliberate
and less prone to error. Hence, the research work has been visualized by the concept of
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integration of human and computer map processing towards the automated understanding the
topographic map.
The main objective of this research work is to develop an automated system for the
understanding of Survey of India (SOI) topographic map. To achieve the objective of
topographic map understanding the human mentation and learning capabilities have been
emulated by computer treatment to develop a soft computation based Indian Topographic
Map understanding system (ITMUS). The first phase in human map understanding process is
reading of map legends which uses color and geometrical appearance of legend. The Legend
understanding subsystem (LUS) has been devised to represent the legend numerically and
described using a set of shape and structure parameters as well as color which has been used
at a different level of matching. The LUS performs static rule based matching and legend
recognition, which is consisting of structure and shape parameters in premise part and
semantic description of the legend in consequent part in a hierarchical manner. The LUS has
been tested on legend set developed by Survey of India and obtained an average accuracy of
88.424%. The interpreted legend description data set has been partitioned into training set
libraries based on the data model prepared by Modern Cartographic Center, Survey of India.
The second phase in human map reading is to utilize the legend description data for
interpreting the objects/symbols present on a topographic map. This phase has been emulated
by the Map understanding subsystem (MUS) which uses legend description data to acquire
information about the legend. However, topographic map treatment by the computer system is
not easy due to high density and overlapping of map objects. This situation has been dealt
with, a “peeling onion strategy”, where the continuous subtraction of the already recognized
map layers has been carried out using image processing techniques to simplify the processing
of the rest of the complex layers. For map object interpretation, "correlation theory of brain"
has been employed. It has been done by designing Fuzzy Inference System (FIS) to infer rules
from initial training set libraries. Once the initial membership functions have been created, the
training of system has been carried out by providing legend structure data and membership
function created by FIS. After the training of system has been finished, the final membership
functions and training error have been produced. The checking data have been used along
with training data to make a system understand and interpret the topographic map objects. The
output of ITMUS effectively conveys the interpreted information to end user. A map
understanding which has been derived from MUS is represented in the form of an interpreted
map (i-map) along with geo-location information. The i-map representation deals with
presenting the annotated/labeled topographic map objects inside the ROI which has been
selected by the end user. The ITMUS generates thematic map information in .tiff, .xlsx, .txt
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and .tab form. The thematic map layer contains geometrical and geospatial information. The
ITMUS stores interpretation results of legends set in excel worksheet and in .pdf file format.
The map analysis report includes the semantic meaning of the interpreting object, it's
geometrical feature values, pixel location, pixel list, and geo-coordinates. ITMUS also
provides insight to the user to extract the color based, feature based layers as well as
intermediate description. The ITMUS has incorporated with an inbuilt accuracy assessment, a
utility for both symbol and layer extraction assessments. Thus, the developed system provides
a generalized framework for automated topographic map understanding by contributing
automated geolocation based information extraction and retrospective map analysis for further
computer-based information processing.
The system performance has been evaluated by providing testing data set into the
fuzzy system through the selection of a region of interest from topographic map. These data
structure consists of a shape feature description of map objects present in that region. The
output of ITMUS represents the semantic description code and provides a resultant
understanding about the map object. The semantic code has been measured on the basis of
correlations between the desired context and learning content. To evaluate and validate
ITMUS with respect to different outputs, different case studies have been carried out to test
different parameters. The ITMUS has been trained for various sample regions selected from
the Survey of India Topographic maps having identity contains, 53C7 and 53K1 under OSM
category. To carry out an evaluation of the system, different map regions have been selected
from 53C7, 53F6, 53F7, 53F11, and 53K1.
It has been found that the overall recognition rate of the system is 90.91%. Further, the
system has been assessed on three other different criteria, i.e., its overall completeness,
correctness, and rate of correct recognition. The criteria have been found to be 0.93, 0.99 and
93.79% respectively. A measure of the overall classification accuracy derived is 88.235%.
The accuracy assessment and validation of ITMUS shows that system is highly robust and
reliable as it is doing well for testing and checking topographic map region. Thus, it may be
concluded that an ITMUS has successfully been developed. The major contribution of this
research work is the integration of image processing techniques for feature extraction and
reasoning capabilities of the Neuro-fuzzy model for enriching the Indian topographic
information system. The major outcome of the study is the development of a generalized
human based map understanding framework for automated extraction of information from the
topographic map. The comprehensive conceptual formalism of map understanding and
development of a robust and reliable solution for automated acquisition and extraction of
information from the Indian topographic map has been made possible. |
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