In the recent past, there have been many efforts to accelerate adaptive beamforming for ultrasound (US) imaging using neural networks (NNs). However, most of these efforts are based on static models, i.e., they are trained to learn a single adaptive beamforming approach (e.g., minimum variance distortionless response (MVDR)) assuming that they result in the best image quality. Moreover, the training of such NNs is initiated only after acquiring a large set of data that consumes several gigabytes (GBs) of storage space. In this study, an active learning framework for beamforming is described for the first time in the context of NNs. The best quality image chosen by the user serves as the ground truth for the proposed technique, which trains the NN concurrently with data acqusition. On average, the active learning approach takes 0.5 seconds to complete a single iteration of training.
翻译:最近,在利用神经网络加速超声波成像的适应性波束成像方面做出了许多努力,但是,这些努力大多以静态模型为基础,即,他们受过培训,可以学习单一的适应性波束成像方法(例如,最小差异无变反应),假设它们能够产生最佳的图像质量;此外,对此类非音成像的培训只有在获得大量数据,消耗若干千兆字节储存空间之后才开始;在本研究中,首次介绍了一个积极的成像学习框架;用户选择的最佳质量图像是拟议技术的基础真相,该技术在对非光谱成像进行与数据质量的同步培训;平均而言,积极学习方法需要0.5秒完成一次培训。