Volume 5, No. 4, April 2014 (Special Issue)
International Journal of Advanced Research in Computer Science
RESEARCH PAPER
Available Online at www.ijarcs.info
© 2010-14, IJARCS All Rights Reserved 240
ISSN No. 0976-5697
CONFERENCE PAPER
Two day National Conference on Innovation and Advancement in Computing
Organized by: Department of IT, GITAM UNIVERSITY Hyderabad (A.P.) India
Schedule: 28-29 March 2014
Geographical Information System & Remote Sensing in Landslide Vulnerable
Mapping
M. Sunandana Reddy
CMR Technical Campus, Kandlakoya, Medchal,
Hyderabad, India
machireddynanda@gmail.com
K. Lakshmikanta Reddy
Sri Venkateswara University, Tirupati
Tirupati, A.P. India
klkreddy_mtech@yahoo.co.in
Abstract: The growth in geospatial technologies has enabled communities to make maps of their lands, relief phases and resource uses, and to
bolster the legitimacy of their customary claims to measure and to resources. This research paper on which it is based emerged out of common
and yet distinct concerns among the authors that spatial information technologies at least in certain contexts and at certain scales alter the
complexion and distribution of power. In order to test and refine our ideas about the Image processing and Digital Elevation Model of
Geographic Information Technology in the mapping of Landslide areas, we carried a research case study of part of Tirumala Hills, A.P. The
landslide activity is related to the following causative factors like slope, geology, land use and rainfall etc,. Thematic maps were prepared for the
factors land use, slope and lithology, which were described and exchanging by using Extensible Markup Language (XML). The land use map
was derived from the image processing technique called ‘supervised classification’ which is completely generated based on the spectral signature
values of the satellite image; the slope map was derived from the digital elevation model (DEM) and the lithology map was derived from the
analysis of image interpretations elements. Vulnerable mapping was prepared by integrating the effect of various triggering factors. Digital
image processing involves the manipulation and interpretation of digital images with the aid of computer. The digital image data became widely
available for land remote sensing applications. The central idea behind digital image processing is quite simple. The image is fed into a computer
one pixel at a time. The computer is programmed to insert these data into an equation, or series of equations, and then store the results of the
computation for each pixel. These results from a new digital image that may be displayed or recorded in pictorial format or may itself be further
manipulated by additional programs. The objective of image classification is to replace visual analysis of the image data with quantitative
techniques for automating the identification of features in a scene. This normally involves the analysis of multispectral image data and the
application of statistically based decision rules for determining the land cover identity of each pixel in an image. When these decision rules are
based solely on the spectral radiances observed in the data, we refer to the classification process as spectral pattern recognition. An attempt has
been made to suggest suitable remedial measure for the highly vulnerable zones by generating the factors from the algorithms of image
processing.
Keywords: GIS, Image Processing, DEM, Land Use, Slope, Landslides
I. INTRODUCTION
The Landslides have become a fast spreading disaster in
most of the mountain systems of the world. Landslides are
frequent and annually recurring phenomenon in the Tirumala
Hills of southernmost part of Cuddapah basin. Outward and
downward movement of mass, consisting or rock and soils,
due to natural or man-made causes is termed as landslide.
High intensity rainfall triggered most of the landslides in the
study area. As long as landslides occur in remote,
unpopulated regions, they are treated as just another
denudation process sculpting the landscape, but when occur
in populated regions, they become subjects of serious study.
The detailed studies show that the dykes, valley fills and
steep slopes are particularly more vulnerable to landslides.
A. Classification of Landslides:
Based on the mass movement, landslides are divided
into four major groups.
a. Slow Flowage: Rock Creep and Soil Creep
b. Rapid Flowage: Earth movements, Mudflows, Debris
Avalanche
c. Sliding: Slumps, Rock Slides, Rock falls, and
Landslips
d. Subsidence: Sinking of mass
B. Causes of Landslides:
a. Internal factors: The steeping of the slope, water
content of the stratum and mineralogical composition
and structural features, which are tending to reduce the
shearing strength of the rocks.
b. External factors: A slight vibration or jerk to the mass
would greatly add up against the frictional resistance and
the mass would become unstable. The heavy traffic on
hill roads is of great contributing factors towards causing
the imbalance of the masses.
II. OBJECTIVES
a. To create spatial database in Geographic Information
environment
b. To demarcate landslide vulnerable mapping by
image processing technique which is ‘supervised
classification’
c. To visualize landslide prone areas in 3D view for hill
are planning
III. STUDY AREA
Study area Tirumala is located in Chittor District of
A.P., which is a mountainous terrain in the South Eastern
part of the Cuddapah Basin. It is geographically located
between 79° 20' 00" and 79° 25' 00" E longitude and 13° 37'
00" and 13° 41' 00" N latitude. The study area falls under the