OL POINTS
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ecture photogrammetry,
and photogrammetry,
hortage of the theory
1 calibration based on
ts in multi images is
g precision of interior
10DEL UTILIZING
NGLE IMAGE
, which are parallel in
image plane, this point
urface image of objects
line information (such as
of the building surface),
fully utilizing vanishing
1ing points
arc based on vanishing
was engaged in the study
re he calibrated camera
inly calibrated interior
ilizing the image with
photogrametry was used
reconstruction. Roberto
ised strict geometrically
m and orthogonality) to
tation parameters of the
Is of the scene from only
positions [6].
ss of vanishing points for
tive is to steer a mobile
of parallel lines in its
xagon as the calibration
he ground plane from its
arameters include the
length of a camera [9].
International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences, Vol XXXV, Part B5. Istanbul 2004
Prof. Nevatia in University of Southem California calibrated the
camera by utilizing the vanishing line in level plane and the
vanishing point in perpendicular in order to analyze people's
motion [8]; from the viewpoints of photogrammetry, [4]
proposed an adjustment model of vanishing point that views line
information in images as observation, thereby realized modeling
only with single image. Its geometric model is shown as Fig. 1:
Yo
Xoo
Figure 1. The relationship between vanishing points
and orientation parameters
Suppose vanishing points in three orthogonal directions in one
image respectively are Xoo, Yoo, Zoo i|! ie. three-point
perspective, and S denotes the perspective center. According to
Fig.l, The principal point lies at the orthocentre of the triangle
formed by the vanishing points.. The focal length f is:
/ = x e. Y Xv d Fx : Ye ( 1)
Three exterior angle parameters are:
m im 2 2 2 2
f zr X Ze d Ya, f + X xo + var
f/
tank zr. v.
tan 9
Il
tan e
2.2 Adjustment model
Vanishing point is the key factor of calibrating because the
parameters being calibrated are all the functions of vanishing
points. Many methods can obtain vanishing points: in 1983
Barnard first proposed the expression of vanishing point based on
Gaussian sphere representation [11], on the basis of this method,
E. Lutton obtained vanishing point through Hough Transform
[12]; Canadian John C.H.Leung discriminated the true vanishing
points from points which naturally arise as the mutual
intersection of many lines in the image utilizing the invariable
property of vanishing points in two images [13]. In this paper an
adjustment model between image lines and vanishing points is
formulated to calibrate camera (detailed in [4]).
Supposing that onc group of parallel lines in one-image crosses
in vanishing point V, ij is one of those lines (Fig.2). Then three
points 7, J, V needs the condition of collinearity, if the
coordinates of vanishing points (x, » Vy ) is unknown, thus we
can build indirect observation adjustment model with unknown
(formula 3):
Figure 2. The definition of vanishing
points
(yy = X; Me (x; c )v,; rwy, )vy
+x, x aly, =p Yh lx, ax yy, +L, =0
Li = —(x, = X, M, = y.) + (y, mU. Xx, = X)
(3)
When the angle between straight line and the
horizontal Ó « 45? , formula 3 can be approximated by:
(x; m v, toy -—*x, Wert (y, — yj),
(4)
+(x, =), + Ly = 0
When the angle between straight line and the
. &o .
horizontal @ > 45° | formula 3 can be approximated by:
(Vy — Y: )us TY, — yy y T (V; - y,)dx,.
wh
Ser’
+(x, x, dy, +L, =0
Although many existing methods have the common feature that
is based on single view. In next section we will, according to
simulation, analyze errors of interior parameters calibrated by
vanishing points of single view.
3. ERROR ANALYSIS
Single-view calibration using vanishing points is feasible
theoretically. However, practical application indicates that this
method only can do week calibration. Because generally the
focus length is evaluated accurately but the principal point is not
so precise [10]. Thus, a feasible assumption is that the principal
point lies at the center of the image, which is a simple
approximation [6].
From cube images of multi angle views simulated by computer
(shown as Fig. 3), we can analyze the error trend of interior
parameters calibrated by single-view method with vanishing
points. The length of the cube is 50m, there are 11 straight lines
in each direction. Given that the focal length of camera is