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International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences, Vol XXXV, Part B3. Istanbul 2004
rather than point features, conventional photogrammetric rules
may not be appropriate (Mikhail and Kanok, 1994); c) most of
these models are valid for the projective geometry imagery of a
photograph which is not exactly the case for linear array sensor
imagery; d) the models become quite complicated when
modified for the geometry and time dependency characteristics
of linear array scanners; e) numerical problems could be
encountered because of the initial approximation; and finally, f)
constraints improve accuracy of the adjustment and increase the
redundancy in estimation but each constraint adds an additional
parameter to the adjustment and multiple constraints may lead
to over parameterization (Habib et al., 2003).
To date, there has been a substantial body of work dealing with
non-rigorous mathematical models (such as rational functions,
affine, polynomial, and DLT models) to circumvent the absence
of satellite information and to rectify HRSI (see for example
Fraser et al. (2002), Fraser and Hanley (2003), Shi and Shaker
(2003), and Grodecki and Dial (2003)). These models are point
based and have focused on two main aspects concerning
accuracy: the accuracy attainable in image rectification, and the
accuracy of DTM extraction by stereo spatial intersection. All
reports demonstrate that the models described in them produce
acceptable results.
It is obvious that linear features can be used with rigorous
mathematical models and points can be applied to non-rigorous
mathematical models. That leads to the question of “Can linear
features be used with non-rigorous mathematical models in
order to circumvent the absence of satellite information and
maintain satisfactory results?” This research answers the
question with the development of a new model named the Line
Based Transformation Model (LBTM).
With the LBTM, most of the problems of using linear features
with the present gencration of rigorous models have been
overcome. The model can either solely use linear features or
use linear features plus a number of control points to define the
image transformation parameters. It is a very simple model
which is time independent, can be applied to images from any
linear array sensor, does not require any information about
sensor calibration or satellite orbit, and does not require any
initial approximation values. The underlying principle of the
model is that the relationship between line segments of straight
lines in the image space and the object space can be expressed
by affine or conformal relationships. The model adopts the
same structure for 3D transformation as the eight-parameter
affine model, and the same structure for 2D transformation as
the six-parameter affine and four-parameter conformal models.
Adopting these structures further allowed direct comparison
between the developed LBTM and the existing models.
Synthetic as well as real data have been used to check the
validity and fidelity of the model and the results show that the
LBTM can be used to efficiently and accurately rectify HRSI.
2. THE MATHEMATICAL MODEL
Successful exploitation of linear features in image rectification
and terrain modeling requires consideration of the following
two major aspects: the mathematical description of linear
features in image and object space and the mathematical
representation of the relationship between the two spaces. There
are different options for representing linear features in both
image and object space. Straight lines, circles, ellipses and free
form lines are examples of such representation. In this work,
straight lines as well as natural lines (free form lines) converted
851
to straight lines by mathematical functions are used. Circles and
ellipses are discarded due to their impracticality and because
they are not transformation invariant.
Various forms of equations can represent straight lines in two
and three-dimensional spaces with each of them exhibiting
some weakness in certain applications. For each of these forms,
describing a line in 2D or 3D space requires two or four
independent parameters, respectively. Straight lines can be
represented in either image or object space in different ways
such as the intersection between two planes, line descriptors,
unit vectors and normal to line descriptors. The Line Based
Transformation Model (LBTM) is based on the relationship
between the unit vector components of a line in image space
and the unit vector components of the conjugate line in object
space. Unit vector representation, which can be obtained from
any two points along straight line segments, was chosen
because they can be easily defined from images, existing geo-
databases or terrestrial mobile mapping systems in both image
and object space. However, the unit vector is not a unique
representation of a straight line as it can represent the line in
question and an infinite number of parallel lines. This problem
is addressed in section 2.1.1.
The LBTM applies to high-resolution satellite imagery
produced from CCD linear array sensors, which are widely used
in remote sensing applications. Regardless of the capturing
technique (cross or along track), images from linear array
sensors consist of independent scanned lines. Each line on the
image is the result of a nearly parallel projection in the flight
direction and a perspective projection in the CCD line direction.
Therefore, rigorous mathematical models based on the
collinearity equations and including a time dependent function
could be applied for geo-referencing the images. To circumvent
the complexity of the time dependent model, in other words, to
simplify the relationship between image and object coordinate
systems, several assumptions were adopted: (a) the satellite
sensor moves linearly in space with stable attitude; (b) the
sensor orientation angles are constant; and (c) the satellite flight
path is almost straight.
Under these assumptions, the scanned lines from the sensor can
be considered to form a continuous (single) image. These
characteristics allow the ordinary collinearity equations
between the satellite imagery and the ground to be replaced by
simple affine and conformal transformation models similar to
those introduced in Hanly and Fraser (2001) and Fraser et al.,
(2002). The underlying principle of the developed model is that
the unit vector components in either image or object space
could replace the point coordinates in the previous models.
Both affine and conformal implementations of the LBTM were
developed. The derivation of the 3D affine LBTM is given in
the following section and the 2D affine and the 2D conformal
LBTM form can be obtained by simplification. Here we will
refer to eight-parameter affine model, six-parameter affine
model, and four-parameter conformal model as 3D affine
model, 2D affine model and 2D conformal model respectively.
2.1 The 3D affine LBTM
Vectors » and V; are unit vectors for conjugate lines in image
and object space respectively (see Figure 1). The two unit
vectors can be defined by any two points along the line segment
in image and object space. Suppose that point p;= (x, y;) and