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International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences, Vol XXXV, Part B3. Istanbul 2004
Points n,,and m> represent matching end point between r, and
[,, on the other hand m; and ;n, are matching end point between
F2 and I.
1. I
(a) (b)
I
* A
; m,
A
E = m, : :
v elec Rte ° : : :
A m, ; : :
SEHE M E ET TT . :
i Si on
i 5i Lui
f Hy >
0 te 7 LP EE I
Figure 3. The original stereo images of ‘man’ and
corresponding projective distortion result. (a) Line profile on
left image. (b) Line profile on right image. (c) Correspondence
of line profiles.
The length of /; is not equal to that of r;. but /; corresponds to r,
in real world coordination. Inevitably, other window-based
stereo matching method is not fit to projective stereo image (T.
Kanade, 1994). Since conventional window-based stereo
matching methods use the same size in reference local window
and searching local window, those methods cannot found
correct matching point. In conclusion, analyses above show that
wndow warping technique is necessary needed in matching
process.
2.2 Window Warping using Fant's algoritm
window warping
0 “ooogd-
n n-2 nf n amd Qul
WU d W pix.) Wace Wig) Wi) War) J
Figure 4. The window warping using Fant's algorithm.
769
We use the Fant's algorithm so as to warp local windows in
hierarchical BMA process. First, local window in low reliability
region is warped to candidate windows. Second, we evaluate
matching possibility between reference window and warped
window.
The main benefit of this separable algorithm is the lower
complexity in 1-D resampling. The fittest window among the
candidate window can be represented as Equation (1)
n+k
FER : n 2:
WW, = AGMINW, 7 mor]?
(1)
where © is window warping size, and w is a local window in a
block matching. We warp a local mask to the horizontal
direction under the assumption of epipolar geometry on an input
image.
3. PROPOSED STEREO MATCHING WITH AN
ADAPTIVE WINDOW WARPING ALGORITHM
Figure 5 shows a stereo matching method we proposed. The
proposed matching algorithm consists of four steps. The first
step is an object extraction. In the second step, hierarchical
block matching is performed to avoid local minima. The multi-
resolution images are used in hierarchical block matching
because the upper disparity result has the disambiguate
characteristic. In the third step, the reliability-map with two
disparity-maps (left-to-right and right-to-left) is obtained.
Reliability includes bi-directional consistency checking and
local disparity variance. The last step is the block matching
process such that the warping window is used in a low reliable
region and the normal window is used in a high reliable region..
Stereo Images
Object Extraction
Bidirectional BMA
Depth Map Reliability
Bidirectional Depth Map
Check Correlation
N
Y
Mask
Resampling
(UP & DOWN )
3
Fixed Mask
Bidirectional HBMA
Modified Hierarchical BMA
LR RL
BMA BMA NK
v
Final
Disparity Map
Figure 5. The block diagram of the proposed algorithm.