TLRN:用于大变形图像配准的时间隐残差网络。

Nian Wu, Jiarui Xing, Miaomiao Zhang
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引用次数: 0

摘要

本文提出了一种新的方法,称为时间隐残差网络(TLRN),用于预测时间序列图像配准中的一系列变形场。配准时间序列图像的挑战通常在于大运动的发生,特别是当图像与参考图像明显不同时(例如,与峰值拉伸阶段相比,心脏周期的开始)。为了获得准确和鲁棒的配准结果,我们利用了运动连续性的本质,并利用了连续图像帧的时间平滑性。我们提出的TLRN突出了在潜在变形空间中精心设计的残余块的时间残余网络,这些残余块由时间序列初速度场参数化。我们将一段时间内的残差块序列视为一个动态训练系统,其中每个块被设计用于学习期望变形特征与从以前的时间框架积累的当前输入之间的残差函数。我们在合成数据和真实的电影心脏磁共振(CMR)图像视频上验证了TLRN的有效性。我们的实验结果表明,与最先进的配准精度相比,TLRN能够实现显着提高的配准精度。我们的代码可以在https://github.com/nellie689/TLRN上公开获得。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
TLRN: Temporal Latent Residual Networks For Large Deformation Image Registration.

This paper presents a novel approach, termed Temporal Latent Residual Network (TLRN), to predict a sequence of deformation fields in time-series image registration. The challenge of registering time-series images often lies in the occurrence of large motions, especially when images differ significantly from a reference (e.g., the start of a cardiac cycle compared to the peak stretching phase). To achieve accurate and robust registration results, we leverage the nature of motion continuity and exploit the temporal smoothness in consecutive image frames. Our proposed TLRN highlights a temporal residual network with residual blocks carefully designed in latent deformation spaces, which are parameterized by time-sequential initial velocity fields. We treat a sequence of residual blocks over time as a dynamic training system, where each block is designed to learn the residual function between desired deformation features and current input accumulated from previous time frames. We validate the effectivenss of TLRN on both synthetic data and real-world cine cardiac magnetic resonance (CMR) image videos. Our experimental results shows that TLRN is able to achieve substantially improved registration accuracy compared to the state-of-the-art. Our code is publicly available at https://github.com/nellie689/TLRN.

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