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Real-time and High Quality Ultrasound Elastography Using Convolutional Neural Network by Incorporating Analytic Signal

机译:卷积神经网络结合分析信号进行实时高质量超声弹性成像

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Convolutional Neural Networks (CNN) have been extensively used for many computer vision applications including optical flow estimation. Although CNNs have been very successful in optical flow problem, they have been rarely used for displacement estimation in Ultrasound Elastography (USE) due to vast differences between ultrasound data and computer vision images. In USE, a main goal is to obtain the strain image which is the derivative of the axial displacement in axial direction; therefore, a very accurate displacement estimation is required. Radio Frequency (RF) data is needed to obtain accurate displacement estimation. RF data contains high frequency contents which cannot be downsampled without significant loss of information, in contrast to computer vision images. We propose a novel technique to utilize LiteFlowNet for USE. For the first time, we incorporate analytic signal to improve the quality of the displacement estimation. We show that this network with the designed inputs is more suitable for USE compared to more complex networks such as FlowNet2. The network is adopted to our application and it is compared with FlowNet2 and a state-of-the-art elastography method (GLUE). The results show that this network performs well and comparable to GLUE. Furthermore, not only this network is faster and has lower memory footprint compared to FlowNet2, but also it obtains higher quality strain images which makes it suitable for portable and real-time elastography devices.
机译:卷积神经网络(CNN)已广泛用于许多计算机视觉应用程序,包括光流估计。尽管CNN在光流问题上非常成功,但是由于超声数据和计算机视觉图像之间的巨大差异,因此CNN很少用于超声弹性成像(USE)的位移估计。在使用中,主要目的是获得应变图像,该应变图像是轴向轴向位移的导数。因此,需要非常精确的位移估计。需要射频(RF)数据以获得准确的位移估计。与计算机视觉图像相比,RF数据包含高频内容,如果不损失大量信息,则无法对其进行下采样。我们提出了一种利用LiteFlowNet进行使用的新颖技术。第一次,我们结合了分析信号来提高位移估计的质量。我们证明,与更复杂的网络(例如FlowNet2)相比,具有设计输入的网络更适合使用。该网络已被应用到我们的应用程序中,并与FlowNet2和最新的弹性成像方法(GLUE)进行了比较。结果表明,该网络性能良好,可与GLUE媲美。此外,与FlowNet2相比,该网络不仅速度更快且内存占用更少,而且还可以获得更高质量的应变图像,从而使其适用于便携式和实时弹性成像设备。

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