6 CONCLUSION AND FUTURE
WORK
In this paper, we proposed a new feature matching
scheme using Feature Lines model which exploits
the advantages of Color Lines representation concept
and its application on solving the problem of au-
tomatic image colorization. By constructing three-
dimensional feature vectors, we considered them as
coordinates of pixels in color space. Reference im-
age is semantically similar to target image, intuitively,
they should have the similar Feature Lines models
which are the outcomes when applying Color Lines
concept to feature images. Following this theory, we
were able to match up feature lines and consequently
pixels from reference and target image. To propa-
gate color from matched reference to target pixels,
we represented reference image as a set of color lines
and defined corresponding color lines of feature lines
in reference image. Color transfering process could
be done accordingly by projecting color from corre-
sponding color lines to harmonized target pixels.
Since, the results of automatic colorization algo-
rithms strongly depend on how semantically equiv-
alent between reference and target image, we might
get imprecise results when input images are not sat-
isfying. Our method exploits the advantage of Color
Lines concept in feature space. Pixels are classified
based on the distribution of their feature vectors in
three-dimensional space. However, feature vectors ar-
rangement is not persistently similar with RGB color.
Feature points gather in a denser and more crowded
area than color pixels in RGB space. For future work,
we would like to explore more robust pixel features to
strengthen matching scheme and work on improving
clustering algorithm to overcome the obstacle of fea-
ture distribution. Additionally, we also intend to ex-
tend our method for any dimensional vectors since our
current approach only dedicates for three-dimensional
features.
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