Table 3: Precentage of erroneous matches – H represents
the images with untextured areas, like Tsukuba pair, O, the
images with a lot of occlusions, like Aloe pair and R, the
images with no major difficulties, like Cones pair (see Fig-
ure 4 for these images). The term Tc refers to the results
obtained with a theoretical or optimal fusion, see Table 2.
The percentage of erroneous matches with the new method
is better than those obtained with the GC measure alone and
in particular with complex scenes.
METHOD H+O O H R Total
GC alone 25.6 17.5 19.6 15.9 20.9
Fusion 22.1 13.5 16.9 13.5 17.5
Tc 19.4 10.8 15.4 10.8 15.3
Image Tsukuba Image Cones Image Aloe
(a)
(b)
(c)
(d)
Figure 4: Disparity maps – (a), left image, (b) disparity map
with SMAD, (c), with GC, (d), with FUSION. The fusion
results present less false negatives, in particular for Cones
and Aloe. The example of Tsukuba illustrates the limits of
the method and the need to combine more than 2 measures.
7 CONCLUSIONS
In this paper, we proposed a study of the comple-
mentarity of correlation measures, illustrated with vi-
sualization maps, and we introduced a new way to
combine complementary measures. Moreover, we
highlight the most complementary measures: GC and
SMAD. The tests on 42 images illustrate the im-
provement of performances of the new fusion algo-
rithm compared to classic correlation matching, i.e.
based on one correlation measure alone. These re-
sults are encouraging but also exhibit the limit of this
approach that might lead to investigate the fusion ap-
proach based on a voting method in the neighborhood
of the studied pixel or to distinguish the most reliable
measures (in the first step of the algorithm). More-
over, we will study the influence of the number of
measures involved in the proposed algorithm.
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