@inproceedings{9a8eca25ea5445bdba268d2cdd072fc1,
title = "Super-resolution in cardiac MRI using a Bayesian approach",
abstract = "Acquisition of proper cardiac MR images is highly limited by continued heart motion and apnea periods. A typical acquisition results in volumes with inter-slice separations of up to 8 mm. This paper presents a super-resolution strategy that estimates a high-resolution image from a set of low-resolution image series acquired in different non- orthogonal orientations. The proposal is based on a Bayesian approach that implements a Maximum a Posteriori (MAP) estimator combined with a Wiener filter. A pre-processing stage was also included, to correct or eliminate differences in the image intensities and to transform the low-resolution images to a common spatial reference system. The MAP estimation includes an observation image model that represents the different contributions to the voxel intensities based on a 3D Gaussian function. A quantitative and qualitative assessment was performed using synthetic and real images, showing that the proposed approach produces a high-resolution image with significant improvements (about 3dB in PSNR) with respect to a simple trilinear interpolation. The Wiener filter shows little contribution to the final result, demonstrating that the MAP uniformity prior is able to filter out a large amount of the acquisition noise.",
keywords = "Bayesian approach, Cardiac MRI, Maximum a posteriori estimation, Super-resolution, Wiener filter",
author = "Toledo, {Nelson Velasco} and Andrea Rueda and Marta, {Cristina Santa} and Eduardo Romero",
year = "2013",
doi = "10.1117/12.2007074",
language = "English",
isbn = "9780819494436",
series = "Progress in Biomedical Optics and Imaging - Proceedings of SPIE",
booktitle = "Medical Imaging 2013",
note = "Medical Imaging 2013: Image Processing ; Conference date: 10-02-2013 Through 12-02-2013",
}