Convolutional Neural Networks (CNN) have shown promising results for displacement estimation in UltraSound Elastography (USE). Many modifications have been proposed to improve the displacement estimation of CNNs for USE in the axial direction. However, the lateral strain, which is essential in several downstream tasks such as the inverse problem of elasticity imaging, remains a challenge. The lateral strain estimation is complicated since the motion and the sampling frequency in this direction are substantially lower than the axial one, and a lack of carrier signal in this direction. In computer vision applications, the axial and the lateral motions are independent. In contrast, the tissue motion pattern in USE is governed by laws of physics which link the axial and lateral displacements. In this paper, inspired by Hooke's law, we first propose Physically Inspired ConsTraint for Unsupervised Regularized Elastography (PICTURE), where we impose a constraint on the Effective Poisson's ratio (EPR) to improve the lateral strain estimation. In the next step, we propose self-supervised PICTURE (sPICTURE) to further enhance the strain image estimation. Extensive experiments on simulation, experimental phantom and in vivo data demonstrate that the proposed methods estimate accurate axial and lateral strain maps.
翻译:超声脉动神经网络(CNN)显示,在超声波弹性测量(USE)中,迁移估计结果令人振奋。许多修改建议都是为了改善美国有线电视新闻网在轴心方向对美国有线电视新闻网的迁移估计。然而,横向压力对于诸如弹性成像的反问题等一些下游任务至关重要,但横向压力仍是一个挑战。横向压力估计是复杂的,因为这一方向的运动和取样频率大大低于轴心力,而且缺乏这方面的载体信号。在计算机视觉应用中,轴力和横向运动是独立的。相比之下,美国有线电视新闻网的组织运动模式受物理法则的制约,这些物理法则将轴力和横向迁移联系起来。在本文中,我们首先提议对无超常的固定式弹性弹性弹性岩压分析(PICTURE)进行物理激励,因为我们对Poisson的有效比例(EPR)作了限制,以进一步改进后期压力估计。在下一个步骤中,我们提议用自我超强型的模型和图像分析方法来展示。