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Compressed sampling strategies for tomography

机译:层析成像的压缩采样策略

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摘要

We investigate new sampling strategies for projection tomography, enabling one to employ fewer measurements than expected from classical sampling theory without significant loss of information. Inspired by compressed sensing, our approach is based on the understanding that many real objects are compressible in some known representation, implying that the number of degrees of freedom defining an object is often much smaller than the number of pixels/voxels. We propose a new approach based on quasi-random detector subsampling, whereas previous approaches only addressed subsampling with respect to source location (view angle). The performance of different sampling strategies is considered using object-independent figures of merit, and also based on reconstructions for specific objects, with synthetic and real data. The proposed approach can be implemented using a structured illumination of the interrogated object or the detector array by placing a coded aperture/mask at the source or detector side, respectively. Advantages of the proposed approach include (i) for structured illumination of the detector array, it leads to fewer detector pixels and allows one to integrate detectors for scattered radiation in the unused space; (ii) for structured illumination of the object, it leads to a reduced radiation dose for patients in medical scans; (iii) in the latter case, the blocking of rays reduces scattered radiation while keeping the same energy in the transmitted rays, resulting in a higher signal-to-noise ratio than that achieved by lowering exposure times or the energy of the source; (iv) compared to view-angle subsampling, it allows one to use fewer measurements for the same image quality, or leads to better image quality for the same number of measurements. The proposed approach can also be combined with view-angle subsampling.
机译:我们研究了投影层析成像的新采样策略,使人们能够采用比经典采样理论所期望的更少的测量,而不会造成大量信息丢失。受压缩感测的启发,我们的方法基于这样的理解,即许多实际对象在某些已知表示中都是可压缩的,这意味着定义对象的自由度数量通常比像素/体素的数量小得多。我们提出了一种基于准随机检测器二次采样的新方法,而以前的方法仅针对源位置(视角)进行了二次采样。使用与对象无关的品质因数以及基于合成和真实数据对特定对象的重建,来考虑不同采样策略的性能。可以通过分别在源或检测器侧放置一个编码孔径/掩模,使用被询问物体或检测器阵列的结构化照明来实现所提出的方法。所提出的方法的优点包括:(i)对探测器阵列进行结构化照明,它导致探测器像素更少,并允许在未使用的空间中集成用于散射辐射的探测器; (ii)对于对象的结构化照明,可以减少医学扫描中患者的辐射剂量; (iii)在后一种情况下,光线的阻挡减少了散射辐射,同时在透射的光线中保持了相同的能量,从而导致信噪比高于通过减少曝光时间或减少光源的能量所获得的信噪比; (iv)与视角子采样相比,它可以使相同的图像质量使用更少的测量,或者在相同的测量数量下获得更好的图像质量。所提出的方法也可以与视角子采样结合。

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