Three-dimensional particle reconstruction with limited two-dimensional projections is an under-determined inverse problem that the exact solution is often difficult to be obtained. In general, approximate solutions can be obtained by iterative optimization methods. In the current work, a practical particle reconstruction method based on a convolutional neural network (CNN) with geometry-informed features is proposed. The proposed technique can refine the particle reconstruction from a very coarse initial guess of particle distribution generated by any traditional algebraic reconstruction technique (ART) based methods. Compared with available ART-based algorithms, the novel technique makes significant improvements in terms of reconstruction quality, {robustness to noises}, and at least an order of magnitude faster in the offline stage.
翻译:三维粒子的重建,加上有限的二维预测,是一个不确定的反向问题,很难找到确切的解决方案。一般而言,可以通过迭代优化方法获得近似解决方案。在目前的工作中,提出了基于具有几何信息特性的进化神经网络(CNN)的实用粒子重建方法。拟议的技术可以从任何传统的代数重建技术(ART)方法产生的粒子分布的非常粗略的初步猜测中完善粒子重建。与现有的基于ART的算法相比,新技术在重建质量、{噪音的腐蚀性、至少在离线阶段更快的量级上大大改进了粒子重建质量。