Displacement estimation is a critical step of virtually all Ultrasound Elastography (USE) techniques. Two main features make this task unique compared to the general optical flow problem: the high-frequency nature of ultrasound radio-frequency (RF) data and the governing laws of physics on the displacement field. Recently, the architecture of the optical flow networks has been modified to be able to use RF data. Also, semi-supervised and unsupervised techniques have been employed for USE by considering prior knowledge of displacement continuity in the form of the first- and second-derivative regularizers. Despite these attempts, no work has considered the tissue compression pattern, and displacements in axial and lateral directions have been assumed to be independent. However, tissue motion pattern is governed by laws of physics in USE, rendering the axial and the lateral displacements highly correlated. In this paper, we propose Physically Inspired ConsTraint for Unsupervised Regularized Elastography (PICTURE), where we impose constraints on the Poisson's ratio to improve lateral displacement estimates. Experiments on phantom and in vivo data show that PICTURE substantially improves the quality of the lateral displacement estimation.
翻译:与一般光流问题相比,以下两个主要特征使这项任务具有独特性:超声无线电频率(RF)数据的高频性质和流离失所地物理法系;最近,对光流网络的结构结构进行了修改,以便能够使用RF数据;此外,对USE采用了半监督和未经监督的技术,对USE采用了半监督和未经监督的技术。为此,我们考虑了以第一和第二次受控的正规化者为形式的流离失所连续性先先先先先知,从而考虑了第一和第二次受控的连续性规范化(PICTURE),从而对USE采用了半监督和未经监督的技术。尽管进行了上述尝试,但没有考虑过组织压缩模式,而且假定非轴和横向方向的流离失所是独立的。然而,组织运动模式受USE物理法系的制约,使得轴和横向流离失所高度关联。在本文中,我们建议对不超超常、正规化的摄影学(PICTUREEE)采用半受监测的受激励和不受监督的同源技术。我们后来限制Poisson与改进后改善横向流离失所估计的比例,我们在这方面比比与改进了Poisson估计的质量质量和数据展示。