In ultrasound tomography, the speed of sound inside an object is estimated based on acoustic measurements carried out by sensors surrounding the object. An accurate forward model is a prominent factor for high-quality image reconstruction, but it can make computations far too time-consuming in many applications. Using approximate forward models, it is possible to speed up the computations, but the quality of the reconstruction may have to be compromised. In this paper, a neural network -based approach is proposed, that can compensate for modeling errors caused by the approximate forward models. The approach is tested with various different imaging scenarios in a simulated two-dimensional domain. The results show that with fairly small training data sets, the proposed approach can be utilized to approximate the modelling errors, and to significantly improve the image reconstruction quality in ultrasound tomography, compared to commonly used inversion algorithms.
翻译:在超声波断层学中,物体内声音的速度是根据传感器围绕物体进行的声学测量估计的。准确的前方模型是高质量图像重建的一个突出因素,但它可以使计算在许多应用中过于耗费时间。使用近似前方模型,有可能加快计算速度,但重建的质量可能受到影响。在本文件中,提出了神经网络-基于神经网络的方法,可以弥补近似前方模型造成的模型错误。该方法在模拟的二维域内用不同的图像情景进行测试。结果显示,如果使用相当小的培训数据集,拟议的方法可以用来近似模型错误,并大大提高超声波摄影图像重建的质量,与常用的转换算法相比。