Title :
Joint Registration and Super-Resolution With Omnidirectional Images
Author :
Arican, Zafer ; Frossard, Pascal
Author_Institution :
Signal Process. Lab. (LTS4), Ecole Polytech. Fed. de Lausanne (EPFL), Lausanne, Switzerland
Abstract :
This paper addresses the reconstruction of high-resolution omnidirectional images from multiple low-resolution images with inexact registration. When omnidirectional images from low-resolution vision sensors can be uniquely mapped on the 2-sphere, such a reconstruction can be described as a transform-domain super-resolution problem in a spherical imaging framework. We describe how several spherical images with arbitrary rotations in the SO(3) rotation group contribute to the reconstruction of a high-resolution image with help of the spherical Fourier transform (SFT). As low-resolution images might not be perfectly registered in practice, the impact of inaccurate alignment on the transform coefficients is analyzed. We then cast the joint registration and super-resolution problem as a total least-squares norm minimization problem in the SFT domain. A l1-regularized total least-squares problem is considered and solved efficiently by interior point methods. Experiments with synthetic and natural images show that the proposed methods lead to effective reconstruction of high-resolution images even when large registration errors exist in the low-resolution images. The quality of the reconstructed images also increases rapidly with the number of low-resolution images, which demonstrates the benefits of the proposed solution in super-resolution schemes. Finally, we highlight the benefit of the additional regularization constraint that clearly leads to reduced noise and improved reconstruction quality.
Keywords :
Fourier transforms; image reconstruction; image registration; image resolution; image sensors; least squares approximations; SFT domain; high resolution omnidirectional image reconstruction; inexact registration; interior point method; l1-regularized total least square problem; least square norm minimization problem; low resolution vision sensor; multiple low resolution image; natural image; regularization constraint; rotation group; spherical Fourier transform coefficient; spherical imaging; super resolution scheme; synthetic image; transform-domain super resolution problem; Harmonic analysis; Image reconstruction; Image resolution; Joints; Minimization; Sensors; Signal resolution; Image reconstruction; image registration; omnidirectional imaging; spherical Fourier ring correlation; spherical imaging; super-resolution;
Journal_Title :
Image Processing, IEEE Transactions on
DOI :
10.1109/TIP.2011.2144609