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Abstract #1982

Image Registration using Averaging VoxelMorph with CNN Edge Detector

Xuan Lei1, Philip Schniter1, Chong Chen1, Yingmin Liu1, and Rizwan Ahmad1
1The Ohio State University, Columbus, OH, United States

Synopsis

Keywords: Analysis/Processing, Motion Correction, MOCO, VoxelMorph

Motivation: Image registration followed by averaging is a common technique to improve the quality of free-breathing single-shot cardiac images. However, registering images becomes challenging when the SNR is low.

Goal(s): Improve image registration for free-breathing cardiac MRI.

Approach: We train a network, called AvgMorph, to register all source images to one target image. In addition, we use the output of a sophisticated deep learning-based edge detector to compute loss.

Results: We validate AvgMorph using a realistic MRXCAT digital phantom for late gadolinium enhancement. AvgMorph outperforms existing methods in terms of NMSE, SSIM, and perceptual quality metrics.

Impact: Pairwise registration of free-breathing images is suboptimal. We propose a network to register all source images to a single target image and utilize a loss function computed to edge maps rather than the images themselves.

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Keywords