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The significance of the spectral correction of photon counting detector response in material classification from spectral X-ray CT

机译:光子计数检测器响应在谱X射线CT的材料分类中的光谱校正的重要性

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Photon counting imaging detectors (PCD) has paved the way for the emergence of Spectral X-ray Computed Tomography (SCT), which simultaneously measures a material's linear attenuation coefficient (LAC) at multiple energies defined by the energy thresholds. In previous work SCT data was analysed with the SIMCAD method for material classifications. The method measures system-independent material properties such as electron density, ρ_e and effective atomic number, Z_(eff) to identify materials in security applications. The method employs a spectral correction algorithm that reduce the primary spectral distortions from the raw data that arise from the detector response: charge sharing and weighting potential cross-talk, fluorescence radiation, scattering radiation, pulse pile up and incomplete charge collection. In this work, using real experimental data we analyze the influence of the spectral correction on material classification performance in security applications. We use a vectorial total variation (L_∞-VTV) as a convex regularizer for image reconstruction of the spectral sinogram. This reconstruction algorithm employs a L_∞ norm to penalize the violation of the inter energy bin dependency, resulting in strong coupling among energy bins. Due to the strong inter-bin correlation, L_∞-VTV leads to noticeably better performance compared to bin-by-bin reconstructions including SIRT and total variation (TV) reconstruction algorithms. The image quality was evaluated with the correlation coefficient that is computed relative to ground-truth images. A positive weighting parameter defines the strength of the L_∞-VTV regularization term and thus controls the trade-off between a good match to spectral sinogram data and a smooth reconstruction in both the spatial and spectral dimension. The classification accuracy both for raw and corrected data is analyzed over a set of weighting parameters. For material classification, we used 20 different materials for calibrating the SIMCAD method and 15 additional materials in the range of 6 ≤ Z_(eff) ≤ 15 for evaluating the classification performance. We show that the correction algorithm accurately reconstructs the measured attenuation curve, and thus gives higher detection rates. We show that using the spectral correction leads to an accuracy increase of 1.6 and 3.8 times in estimating ρ_e and Z_(eff), respectively.
机译:光子计数成像检测器(PCD)已经为频谱X射线计算机断层扫描(SCT)的出现铺平了途径,其同时测量由能量阈值定义的多个能量的材料的线性衰减系数(LAC)。在以前的工作中,使用SIMCAD方法进行了用于材料分类的SIMCAD方法。该方法测量系统无关的材料特性,如电子密度,ρ_和有效原子编号,z_(eff),以识别安全应用中的材料。该方法采用光谱校正算法,可从检测器响应产生的原始数据减少主要频谱失真:电荷共享和加权潜在串扰,荧光辐射,散射辐射,脉冲堆积和不完全充电收集。在这项工作中,使用真实的实验数据我们分析了谱校正对安全应用中材料分类性能的影响。我们使用矢量总变化(L_∞-VTV)作为凸编辑图的图像重建的凸规律器。该重建算法采用L_‖规范来惩罚违反能量箱依赖性的侵犯,从而产生能量箱之间的强耦合。由于箱内的强箱间相关性,与包括SIRT和总变化(TV)重建算法的BIN-BY-BIN重建相比,L_∞-VTV导致明显更好的性能。通过相对于地理图像计算的相关系数评估图像质量。正权力参数定义L_∞-VTV正则化术语的强度,从而控制良好匹配与光谱叠层数据之间的折衷和空间和光谱尺寸的平滑重建。在一组加权参数上分析了对原始和校正数据的分类精度。对于材料分类,我们使用了20种不同的材料来校准SIMCAD方法,以及6≤Z_(EFF)≤15范围内的15个附加材料,用于评估分类性能。我们表明校正算法精确地重建测量的衰减曲线,从而提供更高的检测速率。我们表明,使用光谱校正引线分别在估计ρ_(eff)中的准确性增加1.6%和3.8倍。

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