Conductivity imaging represents one of the most important tasks in medical imaging. In this work we develop a neural network based reconstruction technique for imaging the conductivity from the magnitude of the internal current density. It is achieved by formulating the problem as a relaxed weighted least-gradient problem, and then approximating its minimizer by standard fully connected feedforward neural networks. We derive bounds on two components of the generalization error, i.e., approximation error and statistical error, explicitly in terms of properties of the neural networks (e.g., depth, total number of parameters, and the bound of the network parameters). We illustrate the performance and distinct features of the approach on several numerical experiments. Numerically, it is observed that the approach enjoys remarkable robustness with respect to the presence of data noise.
翻译:传感成像是医学成像中最重要的任务之一。 在这项工作中,我们开发了以神经网络为基础的重建技术,从内部当前密度的大小成像导电学。我们通过将问题表述为一个松散的加权最少的问题,然后通过标准的完全连接的进料神经网络来接近其最小化。我们从一般化错误的两个组成部分(即近似错误和统计错误)中得出界限,明确从神经网络的特性(例如深度、参数总数和网络参数的界限)来看。我们用几个数字实验的方法的性能和不同特点来说明。从数字上看,我们观察到,在数据噪音的存在方面,这种方法非常有力。