Abstract :
We propose a novel algorithm to partition an image
with lowdepth-of-field (DOF) into focused object-of-interest (OOI)
and defocused background. The proposed algorithm unfolds into
three steps. In the first step, we transform the low-DOF image into
an appropriate feature space, in which the spatial distribution of
the high-frequency components is represented. This is conducted
by computing higher order statistics (HOS) for all pixels in the
low-DOF image. Next, the obtained feature space, which is called
HOS map in this paper, is simplified by removing small dark holes
and bright patches using a morphological filter by reconstruction.
Finally, the OOI is extracted by applying region merging to the
simplified image and by thresholding. Unlike the previous methods
that rely on sharp details of OOI only, the proposed algorithm
complements the limitation of them by using morphological filters,
which also allows perfect preservation of the contour information.
Compared with the previous methods, the proposed method yields
more accurate segmentation results, supporting faster processing.
Keywords :
image segmentation , object of interest (OOI). , morphological filter , low depth-of-field (DOF)