'anbul 2004
1 for recon-
p. 133-133.
ant features,
IEEE Com-
| many per-
on - ECCV
on, Copen-
t Il, Lecture
355-369.
que for self-
1 Computer
lo, pp. 112-
> evaluation
1 Computer
E. n.d.
line stereo
mputer Vi-
bratio algo-
tional Con-
ystems and
etric primi-
ing: Image
€ Vision to
n Interface
ssion. Jour-
71-880.
v matching
1 European
rk.
ion. IEEE
ence 17(8),
om motion
" Computer
notion seg-
143.
eo, motion
BASED ON STEREO SEQUENCE IMAGE
3-D MOTION PARAMETERS DETERMINATION
Chunsen ZHANG, Jianging ZHANG, Shaojun He
School of Remote Sensing and Information Engineering
Wuhan University, zhchunsen@sina.com
Commission V, ICWG V/ III
KEY WORDS:Vision Sciences, Video Sequences, Calibration, Feature Extraction, Stereoscopic Matching, 3-D Motion Parameters
ABSTRACT:
Deriving accurate 3-D motion information of a scene is an essential and important task in computer vision, and is also one of the
most difficult problems. In this paper, using photogrammetry method and computer vision technique the author investigates the
determination of 3-D motion parameters from binocular stereo image sequences method and steps. Discussing the in-situ calibration
for binocular stereo computer vision systems, combining correlation coefficients and relaxation method for performing motion and
binocular stereo matching of images based on point feature, 3-D feature points in the motion object correspondences before and after
motion, using “Skew-Symmetric Matrix Decomposition (SSMD)” algorithms which exploits the fewest variables and without losing
the linearity in computation to reduce computing complexity and improve accuracy about motion parameters R and T acquirement
etc. Finally, the motion parameters of real data based on 3-D correspondences feature estimation method are given.
1. PREFACE
It is an important question in computer vision to restore the
motion information of objects from the sequence image. The
three-dimensional space coordinates of the feature points of
moving object is obtained from the binocular stereo sequence
image. Then, according to the above three dimensional
positional information(revolve matrix R and translation vector
T), the moving parameters are figured out. Compared to the
single sequence image movement analysis method, this
computation is simple and also can obtain the absolute
translation quantity. But in this method the spatial three
dimensional coordinates gain, movement object feature point
position extraction, effective match between feature point
stereo and movement(sequence), and 3-D feature points in the
motion object correspondences before and after motion
constitute to the key to solve this question. In order to guarantee
different time movement object feature point correspondence,
the method presented in this paper at first establish binocular
stereo vision system, and obtains the translation relationship
between image space and object space coordinates; then carries
on sequence and stereo match of binocular stereo sequence
image of movement object random feature points. The
calibration result is used to obtaining the object space
coordinates of feature point, and from this to estimate the
parameter of object movement (R, T).
2.BINOCULAR STEREO VISION
SYSTEM CALIBRATION
The calibration about camera is an essential procedure in the
binocular sequence image three-dimensional determination. The
precision and the reliability of camera calibration directly
influence 3D measure precision of Stereovision system. In order
719
ot fit for such case that the off-the-shelf CCD camera’s interior
parameters are unstable during the moving object tracking
process, The author describes the methods of real-time in-suit
calibration of CCD camera in the process of movement analyses
based on feature correspondence by use of the known feature
lines (points) which have geometric relation in object side. This
calibration model is direct linear transformation (DLT) with
distortion correction.
From t Âiek LA AL Y+L,0+L, ES
Lo + ho) +L, 2+]
LXWLYTLZYIL, sa 4
LX wd kl Zl
Where ( L,,L,,---,L,, Jare 11 unknown DLT parameters,
(X,Y,Z ) is the space coordinates control point in object
space. (I, J) is the pixel coordinates, con,” is the pixel
distortion value, CV;, v ) is the correction values of (I, J)
when redundancy exists. The quantites of the elements about
exterior orientation and the photoelectricity transforms
distortion basic term Nx, Ny coefficient may be obtained from
Bla Dar
After L, is obtained, the space coordinates ( U,V,W ) ot
moving object random feature point’ can be obtained by
matching result in both left and right images took from stereo
vision system.Supposes the coefficients L; of two images be
6 dois 1a 3 and CLi,La,, Lu) respectively. the
mathematical models for calculating object space feature point
CUV,W) is:
Jtv, +8 +
Lex d El Lt RU Ls
hh eis bere. trie ©
Lok x4 Latvia be L, +x
L. + X Ls La zb y Lin La x y Ln PB + y