Fast Registration Method for Large-Field-of-View Nailfold Video Images
Based on Improved Projection Analysis
Abstract
In nailfold video recordings, the micro-shaking of the hand is amplified
and interferes with physician observations and parameter measurement. We
developed a fast and accurate registration method for
large-field-of-view nailfold video images. Nailfold videos are first
represented in the YCrCb color space, with the Cb spatial component
replacing the original grayscale image to reduce sensitivity to
illumination. The projection variance of each row/column is employed to
improve registration accuracy and processing speed. The method was
compared with Origin GrayDrop, feature point matching, DUT, and Adobe
Premiere Pro in terms of the peak signal-to-noise ratio, structural
similarity index, and mean squared error. The peak signal-to-noise ratio
and structural similarity index are enhanced, and the mean squared error
is reduced compared to the original projection method. The proposed
method is faster than the comparison methods and provides the best
combination of registration accuracy and fast processing for nailfold
video image registration.