Recently, experiments have been reported where researchers were able to perform high dynamic range (HDR) tomography in a heuristic fashion, by fusing multiple tomographic projections. This approach to HDR tomography has been inspired by HDR photography and inherits the same disadvantages. Taking a computational imaging approach to the HDR tomography problem, we here suggest a new model based on the Modulo Radon Transform (MRT), which we rigorously introduce and analyze. By harnessing a joint design between hardware and algorithms, we present a single-shot HDR tomography approach, which to our knowledge, is the only approach that is backed by mathematical guarantees. On the hardware front, instead of recording the Radon Transform projections that my potentially saturate, we propose to measure modulo values of the same. This ensures that the HDR measurements are folded into a lower dynamic range. On the algorithmic front, our recovery algorithms reconstruct the HDR images from folded measurements. Beyond mathematical aspects such as injectivity and inversion of the MRT for different scenarios including band-limited and approximately compactly supported images, we also provide a first proof-of-concept demonstration. To do so, we implement MRT by experimentally folding tomographic measurements available as an open source data set using our custom designed modulo hardware. Our reconstruction clearly shows the advantages of our approach for experimental data. In this way, our MRT based solution paves a path for HDR acquisition in a number of related imaging problems.
翻译:最近,一些实验被报道,研究人员能够以超光速方式进行高动态范围(HDR)的成像法,通过模拟多映像的预测,以超光速方式完成高动态范围(HDR)的成像学。在《人类发展报告》的成像法中,这种对《人类发展报告》的成像法的灵感来自《人类发展报告》的摄影学,并继承了同样的缺点。我们在这里建议采用基于Modulo Radon变形(MRT)的计算成像方法(MRT)的新模型,这是我们严格介绍和分析的。通过利用硬件和算法之间的联合设计,我们提出了一个单一的成像《人类发展报告》的成像学方法,这是我们的知识中唯一有数学保证的方法。在硬件前,我们没有记录我可能饱和的Radon变形图,我们建议用它来测量同样的变形值。这确保《人类发展报告》的测量结果被折叠成一个较低的动态范围。在算学上,我们的恢复算算法从折叠的测量方法中重建了《人类发展报告》的数学问题,例如带宽幅幅幅幅幅和近支持的图像,我们还提供了一种铺路图图图图图图图图图的首次证明。