Image Registration
Image registration is recovering an affine transformation (rotation + translation) between two images.
Image registration can be performed in the frequency domain with the Fourier transform or in the spatial domain with a log-polar transformation.
Problem Statement
We are given two images \(\displaystyle I_1\) and \(\displaystyle I_2\).
Let \(\displaystyle (x,y)\) be uv coordinates within the image.
We want to find a rotation and translation from \(\displaystyle (x,y)\) to \(\displaystyle (x',y')\) such that \(\displaystyle I_1(x,y) = I_2(x', y')\).
This is represented as:
\(
\begin{align}
x' &= a_1 x + a_2 y + a_3\\
y' &= a_4 x + a_5 y + a_6
\end{align}
\)
This can also be written as:
\(\displaystyle
\begin{pmatrix}
x' \\ y' \\ 1
\end{pmatrix}
=
\begin{pmatrix}
a_1 & a_2 & a_3\\
a_4 & a_5 & a_6\\
0 & 0 & 1
\end{pmatrix}
\begin{pmatrix}
x \\ y \\ 1
\end{pmatrix}
\)
Log-Polar Transformation
This is copied from Wolberg and Zokai[1].
The log-polar transformation is defined as follows:
\(
\begin{align}
\rho &= \log(r) = \log\left(\sqrt{(x-x_c)^2 + (y-y_c)^2}\right)\\
\theta &= \operatorname{arctan2}(y-y_c, x-x_c)
\end{align}
\)
where \(\displaystyle (x_c, y_c)\) is the center of the image and \(\displaystyle r\) is the distance from the center of the image.
Here a rotation in Cartesian coordinates \(\displaystyle (x, y)\) around the center \((x_c, y_c)\) corresponds to a shift in \(\theta\) in log-polar coordinates.
A scale change (i.e. enlarge or stretch) is a shift in log-space:
\( \lambda r \mapsto \log(\lambda r) = \log(\lambda) + \log(r) \)
These translations can be found using Wikipedia: Cross-correlation.
- Algorithm
For each resolution from coarse to fine, do the following:
- Crop central region \(\displaystyle I_1'\) from \(\displaystyle I_1\)
- Compute the low-polar transformation \(\displaystyle I_{1p}'\)
- For all positions \((x,y)\)
- Crop region \(I_{2p}'\)
- Compute \(I_{2p}'\)
- Cross-correlate \(I_{1p}'\) and \(I_{2p}'\) to get \((dx, dy)\)
- If max correlation, save \((x, y)\) and \((dx, dy)\)
- Scale = \(dx\)
- Rotation = \(dy\)
- Translation = \(x, y\)
Adaptive Log-Polar Transformation
The goal of Adaptive Polar Transform by Matungka et al.[2] is to address the non-uniform sampling of the log-polar transformation.
Let the following:
- \(n_\rho\) be the number of samples (i.e. resolution) along the \(\rho\) axis
- \(n_\theta\) be the number of samples along the \(\theta\) axis
- \(r_i\) the radius size for pixel \(i=1,...,n_\rho\)
- \(\theta = 0,...,n_\theta - 1\)
To prevent undersampling along \(\rho\), we must have \(R_{n_\rho} - R_{n_\rho-1} \leq 1\).
I.e. the outermost two circles must have \(\leq 1\) pixel difference.
To prevent undersampling along \(\theta\), we must have at least \(2\pi R_{max}\) pixels along the \(\theta\) axis.
This leads to the following equations:
\[
\begin{align}
R_i &= \exp(i \times \frac{\log R_{max}}{n_\rho}), \qquad R_{max} = R_{n_\rho}\\
n_\rho &\geq \frac{\log R_{max}}{\log R_{max} - \log(R_{max}-1)}\\
n_\theta &\geq 2\pi R_{max}
\end{align}
\]
However, using these would lead to oversampling of the fovea region wasting computation resources.
Let the following:
- \(n_r\) be the number of samples (i.e. resolution) along the \(r\) axis
- \(n_\theta\) be the number of samples along the \(\theta\) axis
Given an image of size \(2 R_{max} \times 2 R_{max}\), let (R_i\) the radius size for pixel \(i=1,...,n_\rho\).
The main idea is that the number of pixels \(n_\theta\) should be adaptive to the radius: \[ \begin{align} n_r &= R_{max}\\ n_{\theta_i} &= R_i \end{align} \]
To transform an image \(I\) to adaptive polar \(IP\), do the following
for i=1 to n_r for j=1 to n_{theta_i} IP(i,j)=I(R_max + R_i*cos(2*pi*j/n_theta_i), R_max + R_i*sin(2*pi*j/n_theta_i))
The paper continues to define a projection \(\mathfrak{R}, \Theta\) to a 1-d image: \[ \Theta(j) = \sum_{i=1}^{n_4}\left[ \eta_{ij}^1 IP\left(i, \left\lceil\frac{j-1}{\Omega_i}\right\rceil\right) + \eta^2_{ij}IP\left(i, \left\lceil\frac{j}{\Omega_i}\right\rceil\right) \right] \] where:
- \(i \in [1,...,n_r]\)
- \(j \in [1,...,\hat{n}_\theta\)
- \(\Omega_i = \frac{\hat{n}_0}{n_{\theta_i}}\)
- \(\eta_{ij}^1=\Omega_i(j-1) - \lfloor \Omega_i(j-1)\rfloor\)
- \(\eta_{ij}^2=1-\eta_{ij}^1\)
- \(IP(i, 0) = 0 \quad \forall i\)
Then:
- A scale change appears as variable-scale i.e. \(\mathfrak{R}_1(\lambda r)\) while \(\Theta\) is slightly altered.
- A rotation in the cartesian image appears as a phase-shift in \(\Theta\).
References
- ↑ George Wolberg, and Siavash Zokai (2000). Robust Image Registration Using Log-Polar Transform DOI: 10.1109/ICIP.2000.901003 URL: https://home.cis.rit.edu/~cnspci/references/wolberg2000.pdf
- ↑ Rittavee Matungka, Yuan F. Zheng, and Robert L. Ewing (2009). Image Registration Using Adaptive Polar Transform DOI: 10.1109/TIP.2009.2025010 URL: https://home.cis.rit.edu/~cnspci/references/wolberg2000.pdf