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Semantically Guided Large Deformation Estimation with Deep Networks

机译:深度网络的语义引导大变形估计

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摘要

Deformable image registration is still a challenge when the considered images have strong variations in appearance and large initial misalignment. A huge performance gap currently remains for fast-moving regions in videos or strong deformations of natural objects. We present a new semantically guided and two-step deep deformation network that is particularly well suited for the estimation of large deformations. We combine a U-Net architecture that is weakly supervised with segmentation information to extract semantically meaningful features with multiple stages of nonrigid spatial transformer networks parameterized with low-dimensional B-spline deformations. Combining alignment loss and semantic loss functions together with a regularization penalty to obtain smooth and plausible deformations, we achieve superior results in terms of alignment quality compared to previous approaches that have only considered a label-driven alignment loss. Our network model advances the state of the art for inter-subject face part alignment and motion tracking in medical cardiac magnetic resonance imaging (MRI) sequences in comparison to the FlowNet and Label-Reg, two recent deep-learning registration frameworks. The models are compact, very fast in inference, and demonstrate clear potential for a variety of challenging tracking and/or alignment tasks in computer vision and medical image analysis.
机译:当所考虑的图像在外观上有很大的变化并且初始偏差较大时,可变形的图像配准仍然是一个挑战。对于视频中快速移动的区域或自然物体的强烈变形,目前仍存在巨大的性能差距。我们提出了一种新的语义指导的两步式深层变形网络,该网络特别适合于大变形的估计。我们将U-Net架构与细分信息进行弱监督相结合,以利用多阶段的非刚性空间变换器网络(通过低维B样条变形参数化)提取语义上有意义的特征。将对齐损失和语义损失函数与正则化惩罚结合在一起以获得平滑和合理的变形,与以前仅考虑标签驱动对齐损失的方法相比,我们在对齐质量方面取得了优异的结果。与最新的两个深度学习注册框架FlowNet和Label-Reg相比,我们的网络模型提高了医学心脏磁共振成像(MRI)序列中受试者间面部部分对齐和运动跟踪的技术水平。这些模型紧凑,推断速度非常快,并且在计算机视觉和医学图像分析中展示出了用于各种具有挑战性的跟踪和/或对齐任务的明显潜力。

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