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Communal Domain Learning for Registration in Drifted Image Spaces

机译:在漂移图像空间中注册的公共领域学习

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摘要

Designing a registration framework for images that do not share the same probability distribution is a major challenge in modern image analytics yet trivial task for the human visual system (HVS). Discrepancies in probability distributions, also known as drifts, can occur due to various reasons including, but not limited to differences in sequences and modalities (e.g., MRI T1-T2 and MRI-CT registration), or acquisition settings (e.g., multisite, inter-subject, or intra-subject registrations). The popular assumption about the working of HVS is that it exploits a communal feature subspace exists between the registering images or fields-of-view that encompasses key drift-invariant features. Mimicking the approach that is potentially adopted by the HVS, herein, we present a representation learning technique of this invariant communal subspace that is shared by registering domains. The proposed communal domain learning (CDL) framework uses a set of hierarchical nonlinear transforms to learn the communal subspace that minimizes the probability differences and maximizes the amount of shared information between the registering domains. Similarity metric and parameter optimization calculations for registration are subsequently performed in the drift-minimized learned communal subspace. This generic registration framework is applied to register multisequence (MR: Tl, T2) and multimodal (MR, CT) images. Results demonstrated generic applicability, consistent performance, and statistically significant improvement for both multi-sequence and multi-modal data using the proposed approach (p-value< 0.001; Wilcoxon rank sum test) over baseline methods.
机译:为不具有相同概率分布的图像设计注册框架是现代图像分析中的一大挑战,但对于人类视觉系统(HVS)而言却是微不足道的任务。概率分布的差异(也称为漂移)可能由于各种原因而发生,包括但不限于序列和方式(例如MRI T1-T2和MRI-CT配准)或采集设置(例如多位, -主题或主题内部注册)。关于HVS工作的普遍假设是,它利用了在包含关键漂移不变特征的配准图像或视场之间存在的公共特征子空间。模仿HVS可能采用的方法,在这里,我们介绍了一个不变的公共子空间的表示学习技术,该技术由注册域共享。提出的公共域学习(CDL)框架使用一组分层的非线性变换来学习公共子空间,该子空间可最大程度地降低概率差异并最大化注册域之间的共享信息量。随后在漂移最小化的学习公共子空间中执行用于注册的相似性度量和参数优化计算。该通用配准框架适用于配准多序列(MR:T1,T2)和多模式(MR,CT)图像。结果表明,与基线方法相比,使用拟议的方法(p值<0.001; Wilcoxon秩和检验),多序列和多模态数据的通用性,一致的性能和统计学上的显着改善。

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