基于改进谱投影梯度算法的X射线发光断层成像
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侯榆青, 贾涛, 易黄建, 张海波, 贺小伟. 基于改进谱投影梯度算法的X射线发光断层成像[J]. 光学 精密工程, 2017, 25(1): 42. HOU Yu-qing, JIA Tao, YI Huang-jian, ZHANG Hai-bo, HE Xiao-wei. X-ray luminescence computed tomography based on improved spectral projected gradient algorithm[J]. Optics and Precision Engineering, 2017, 25(1): 42.