Neural network related methods, due to their unprecedented success in image processing, have emerged as a new set of tools in CT reconstruction with the potential to change the field. However, the lack of high-quality training data and theoretical guarantees, together with increasingly complicated network structures, make its implementation impractical. In this paper, we present a new framework (RBP-DIP) based on Deep Image Prior (DIP) and a special residual back projection (RBP) connection to tackle these challenges. Comparing to other pre-trained neural network related algorithms, the proposed framework is closer to an iterative reconstruction (IR) algorithm as it requires no training data or training process. In that case, the proposed framework can be altered (e.g, different hyperparameters and constraints) on demand, adapting to different conditions (e.g, different imaged objects, imaging instruments, and noise levels) without retraining. Experiments show that the proposed framework has significant improvements over other state-of-the-art conventional methods, as well as pre-trained and untrained models with similar network structures, especially under sparse-view, limited-angle, and low-dose conditions.
翻译:由于在图像处理方面取得前所未有的成功,与神经网络相关的方法已成为CT重建的新工具,有可能改变领域,然而,由于缺乏高质量的培训数据和理论保障,加上日益复杂的网络结构,使得其实施变得不切实际。在本文件中,我们提出了一个新的框架(RBP-DIP),其基础是深图像前(DIP)和特殊的残余后向投影(RBP),以应对这些挑战。与其他培训前神经网络相关算法相比,拟议的框架更接近于迭代重建(IR)算法,因为它不需要培训数据或培训程序。在这种情况下,拟议的框架可以对需求进行修改(例如,不同的超参数和限制),在没有再培训的情况下适应不同的条件(例如,不同的图像物体、成像仪器和噪音水平)。实验表明,拟议的框架比其他最先进的常规方法,以及预先培训和未经培训的类似网络结构模式,特别是在低视线下,有限的和低剂量条件下。