@inproceedings{f808ddfe662444a7a8538406d15a91fc,
title = "2D/3D US-TO-MRI RIGID REGISTRATION by DEEP LEARNING",
abstract = "2D ultrasound (US) images to 3D magnetic resonance (MR) image registration is a crucial module in US-guided surgical navigation. US images need to be aligned with a preoperative image to provide good anatomy information guidance during interventions. However, the difference between the modality of US and MR makes the task challenging. To address this problem, we propose a learning-based rigid registration method between 2D US and 3D MR. The geodesic distance on the special Euclidean group SE(3) equipped with a left-invariant Riemannian metric is used as the loss function of a regression network. The registration result is optimized from the registration network by maximizing the similarity metric defined by a local structure orientation descriptor (LSOD). We achieve the angle and distance errors of 3.83 ± 0.39° and 0.017 ± 0.001 mm, outperforming the L2 norm loss function which results in 4.21 ± 0.19° angle error and 0.039 ± 0.001 mm distance error. Qualitative and quantitative evaluations confirm that the proposed method can achieve accurate 2DUS-3DMRI rigid registration.",
keywords = "2DUS-3DMRI, Deep learning, Rigid registration",
author = "Han, {Jia Xin} and Fu, {Tian Yu} and Fan, {Jing Fan} and Deng, {Qiao Ling} and Jian Yang",
note = "Publisher Copyright: {\textcopyright} 2021 ACM.; 3rd International Conference on Intelligent Medicine and Image Processing, IMIP 2021 ; Conference date: 23-04-2021 Through 26-04-2021",
year = "2021",
month = apr,
day = "23",
doi = "10.1145/3468945.3468951",
language = "English",
series = "ACM International Conference Proceeding Series",
publisher = "Association for Computing Machinery",
pages = "33--38",
booktitle = "IMIP 2021 - Proceedings of 2021 3rd International Conference on Intelligent Medicine and Image Processing",
}