The conventional optical flow has a fundamental limitation in handling motion details and image registration. In this paper, we propose a Zernike moments descriptor matching based symmetric optical flow estimation for high-quality image registration and motion estimation, which is an integration strategy of descriptor matching of Zernike moments and symmetric optical flow estimation. Zernike moment has less information redundancy and low sensitivity to n
matlab图像融合源码
I'm
terribly
sorry,
there
are
errors
of
the
description
in
Section-III(B)
of
the
paper
“Remote
Sensing
Image
Registration
with
Modified
SIFT
and
Enhanced
Feature
Matching”.
We
have
uploaded
the
errors
in
document
named
《
revised
of
the
PSO-SIFT》.I'm
sorry
to
have
affected
your
reading.
我们已经出版的文章《Remote
Sensing
Image
Registration
with
Modified
SIFT
and
Enhanced
Feature
Matching》在第三部分(B)存在一些描述性错误,可能会给你的阅读带来麻烦,因此我们上传了出错的地方,并给出了正确的描述方法,文档名字为“revised
of
the
PSO-SIFT”。CSDN
博主对已经翻译了该论文:
Im