2019 JRNL PP Huangxuan Zhaoi - 1.pdf
Terbatas  Irwan Sofiyan
» Gedung UPT Perpustakaan
Terbatas  Irwan Sofiyan
» Gedung UPT Perpustakaan
In this paper,we are proposing a novelmotion
correction algorithm for high-resolution OR-PAM imaging.
Our algorithm combines a modified demons-based tracking
approach with a newly developed multi-scale vascular
feature matching method to track motion between adjacent
B-scan images without needing any reference object.
We first applied this algorithm to correct motion artifacts
within one three-dimensional (3D) data segment of rat iris
obtained with OR-PAM imaging. We then extended the
application of this algorithm to correct motions to obtain
vasculature imaging in the whole mouse back. In here,
we stitched five adjacent 3D data segments (large fieldof-
view) obtained while changing the focus of OR-PAM
differently for each subarea. The results showed that the
motion artifacts of both large blood vessels and microvessels
could be accurately corrected in both cases.Compared
to the manually stitching method and the traditional SIFT
algorithm, the algorithm proposed in this paper has better
performance in stitching adjacent data segments. The high
accuracy of the motion correction algorithm makes it valuable
in OR-PAM for high-resolution imaging of large animals
and for quantitative functional imaging.