(IX-B3, 2012
International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences, Volume XXXIX-B3, 2012
XXII ISPRS Congress, 25 August — 01 September 2012, Melbourne, Australia
A SEMIAUTOMATIC APPROACH FOR GENERATION OF SITE MODELS FROM
CARTOSAT-2 MULTIVIEW IMAGES
Archana Mahapatra, Sumit Pandey, D Sudheer Reddy, P S Subramanyam, B. K. Das, P V Radhadevi, J Saibaba, Geeta Varadan
Advance Data Processing Research Institute, Department of Space,
203 Akbar Road, Secunderabad-500009, INDIA,
archaana(Dadrin.res.m
Commission III, WG II[/4, III/5
KEY WORDS: Site Model, Physical Sensor Model, Relative orientation, conjugate points, edge extraction, normalized DSM
ABSTRACT:
In the last decade there has been a paradigm shift in creating, viewing and utilizing geospatial data for planning, navigation and
traffic management of urban areas. Realistic, three-dimensional information is preferred over conventional two dimensional maps.
The paper describes objectives, methodology and results of an operational system being developed for generation of site model from
Cartosat-2 multiview images. The system is designed to work in operational mode with varying level of manual interactivity. À
rigorous physical sensor model based on collinearity condition models the ‘step n stare’ mode of image acquisition of the satellite.
The relative orientation of the overlapping images is achieved using coplanarity condition and conjugate points. A procedure is
developed to perform digitization in mono and stereo modes. A technique for refining manually digitized boundaries is developed.
The conjugate points are generated by establishing a correspondence between the points obtained on refined edges to analogous
points on the images obtained with view angles +26 deg. It is achieved through geometrically constrained image matching method.
The results are shown for a portion of multi-view images of Washington City obtained from Cartosat-2. The scheme is generic to
accept very high resolution stereo images from other satellites as input.
1. INTRODUCTION
A site model represents both the natural and man-made features
such as terrain, road, and buildings to sufficient level of detail
so that it can be considered as a true model of the area under
consideration. Buildings are important objects of any 3D city
model. The algorithms for fully automatic extraction of
buildings are not matured enough as a result many researchers
in this field opt for semi automatic methods (Gruen 99).
Building extraction requires representation of roof structures. A
finer model represents roof details, overhangs and includes
realistic texture of the building (Ulm and Poli, 2006). It can also
have architectural details of the building. In a coarse model,
detection of the buildings is only possible. A DSM rendered
with texture may be considered as coarse city model (Kraub,
2008).
The inputs required for generating finer details includes aerial
images, terrestrial images, LIDAR measurements and building
plans (Vosselman et al, 2001). The geometric resolution and
radiometric quality of the images are important as it should be
possible to identify and delineate features.
Aerial images have the advantage of very high geometric
resolution and low noise levels. In the last few years, there has
been considerable improvement in the technology to provide
better resolution images from space platforms. The images from
IKONOS, Quickbird, Worldview-1/2, Geoeye-1, and Cartosat-2
have geometric resolution less than one meter. These geometric
resolution levels are not sufficient to generate finer models,
however extraction and representation of major features are still
possible.
The objective of this work is to develop a semiautomatic system
to generate site models from satellite stereo images/multiview
Images in operational mode. At present the focus is mainly on
the extraction and representation of building flat roof tops. It is
not envisaged to generate a photorealistic site model,
reconstruction of complex building roof structures and
individual representation of trees.
The paper describes in brief the imaging geometry of Cartosat-2
and physical sensor model developed, followed by details of
computation of relative orientation parameters and comparative
analysis of rational function model with physical sensor model.
A method of refining digitized edges with the help of canny
edges is briefed. The semiautomatic mode of data capture and
image matching techniques are described subsequently. A
section is devoted to explain generation of DSM and DTM.
Finally results are presented for a portion of the Washington
city.
2. METHODOLOGY
2.1 Cartosat-2 Imaging Geometry
India’s highest resolution imaging satellite, Cartosat-2, was
launched in 2007. The spatial resolution of better than one
meter in panchromatic band is achieved through ‘step n stare’
mechanism of image acquisition. In this image acquisition
process, the effective ground velocity is reduced by
continuously steering camera in the direction opposite to
spacecraft motion. Reduction of ground trace velocity in turn
improves the spatial resolution of the image in along-track
direction. To reduce the pixel cross talk and improve the image
quality, the CCD arrays have staggered configuration in the
focal plane. Even and odd pixels of a line are recorded by the
two detector arrays that are separated by 351 in the focal plane.
It means that the adjacent pixels of a line are not imaged at
same instant. If all odd numbered pixels of a line are imaged at
instant t, the even numbered pixels will be imaged at instant
represented by t + 5xintegration time.