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Exploiting shared image structure fusion in multi-modality data inversion for atherosclerotic plaque characterization.

机译:在多模态数据反演中利用共享图像结构融合来表征动脉粥样硬化斑块。

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In many subsurface sensing problems, single-sensor information quality is poor, due to factors such as constrained sensing geometries and limited energy penetration. In such cases, there is interest in combining information from multiple complementary sensing modalities to enhance signal estimation. Our work focuses on fusing heterogeneous subsurface reconstructive imaging modalities by extending variational boundary-preserving image smoothing methods from the computer vision community to multisensor environments involving physics-based signal processing.; Specifically, we develop a unified joint optimization framework for fusing and estimating boundary structure shared among multiple imaging modalities; we simultaneously exploit these fused boundaries to enhance image reconstructions. Our approach incorporates observation models for each modality's data, alignment parameters for registering the modalities, and models relating the common boundaries to the modalities' reconstructions. We carefully choose our optimization criteria to reduce the impact of ill-posed or badly conditioned observation kernels and to obtain more stable, reliable, and robust reconstruction estimates in the face of observation, modeling, and computational error sources.; The specific application that motivates this work is the imaging of vulnerable atherosclerotic plaques. Vulnerable atherosclerotic plaques are blood vessel wall segments, damaged by inflammation, that are prone to rupture, releasing clotting agents that can cause heart attacks or strokes. No single imaging modality has yet demonstrated the ability to detect these vulnerable lesions reliably. We demonstrate our approach by fusing edge observations from Magnetic Resonance (MR) and Computed Tomography (CT) blood vessel imagery into a single, shared, underlying tissue boundary field estimate, while we simultaneously exploit the fused boundaries to enhance and reinforce edges in the estimated MR and CT tissue reconstructions. We demonstrate our approach by fusing boundary field estimates from MR and CT blood vessel imagery into a single estimated underlying tissue boundary field, while simultaneously estimating the original imagery to better estimate tissue characteristics and structure.; More generally, we present an approach for multi-modality subsurface data inversion and fusion based on shared image structure. This approach allows for better estimates of the characteristics and structure of the underlying scene. These objective criteria form a unified optimal multi-modality boundary-preserving inversion and registration framework.
机译:在许多地下传感问题中,由于诸如传感几何形状受限和能量渗透受限等因素,单传感器信息质量很差。在这种情况下,存在对组合来自多个互补感测模态的信息以增强信号估计的兴趣。我们的工作集中在融合异构地下重建成像模态上,方法是将保留边界的可变图像平滑方法从计算机视觉社区扩展到涉及基于物理信号处理的多传感器环境。具体来说,我们开发了一个统一的联合优化框架,用于融合和估计在多种成像方式之间共享的边界结构;我们同时利用这些融合的边界来增强图像重建。我们的方法包括针对每个模态数据的观察模型,用于注册模态的对齐参数以及将公共边界与模态重构相关的模型。面对观察,建模和计算误差源,我们谨慎地选择优化标准,以减少不适定或条件恶劣的观察内核的影响,并获得更稳定,可靠和可靠的重建估计。推动这项工作的特定应用是对脆弱的动脉粥样硬化斑块的成像。脆弱的动脉粥样硬化斑块是血管壁段,由于炎症而受损,易于破裂,释放出可能引起心脏病或中风的凝血剂。尚无单一的成像方式能够可靠地检测出这些脆弱的病变。我们通过将磁共振(MR)和计算机断层扫描(CT)血管图像的边缘观察融合到单个共享的基础组织边界场估计中来证明我们的方法,同时我们利用融合的边界来增强和增强估计中的边缘MR和CT组织重建。我们通过将MR和CT血管图像的边界场估计融合到单个估计的基础组织边界场中,同时估计原始图像以更好地估计组织特征和结构来证明我们的方法。更笼统地说,我们提出了一种基于共享图像结构的多模式地下数据反演和融合方法。这种方法可以更好地估计基础场景的特征和结构。这些客观标准形成了统一的最优多模态边界保留反演和配准框架。

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