Dennerlein Frank, Kunze Holger, Noo Frédéric
Siemens AG, Healthcare Sector, Forchheim 91301, Germany.
Tsinghua Sci Technol. 2010 Feb;15(1):17-24. doi: 10.1016/S1007-0214(10)70003-1.
A direct filtered-backprojection (FBP) reconstruction algorithm is presented for circular cone-beam computed tomography (CB-CT) that allows the filter operation to be applied efficiently with shift-variant band-pass characteristics on the kernel function. Our algorithm is derived from the ramp-filter based FBP method of Feldkamp et al. and obtained by decomposing the ramp filtering into a convolution involving the Hilbert kernel (global operation) and a subsequent differentiation operation (local operation). The differentiation is implemented as a finite difference of two (Hilbert filtered) data samples and carried out as part of the backprojection step. The spacing between the two samples, which defines the low-pass characteristics of the filter operation, can thus be selected individually for each point in the image volume. We here define the sample spacing to follow the magnification of the divergent-beam geometry and thus obtain a novel, depth-dependent filtering algorithm for circular CB-CT. We evaluate this resulting algorithm using computer-simulated CB data and demonstrate that our algorithm yields results where spatial resolution and image noise are distributed much more uniformly over the field-of-view, compared to Feldkamp's approach.
本文提出了一种用于圆锥束计算机断层扫描(CB-CT)的直接滤波反投影(FBP)重建算法,该算法允许在核函数上以具有移位可变带通特性的方式高效地应用滤波操作。我们的算法源自Feldkamp等人基于斜坡滤波的FBP方法,通过将斜坡滤波分解为涉及希尔伯特核的卷积(全局操作)和随后的微分操作(局部操作)而获得。微分作为两个(希尔伯特滤波后的)数据样本的有限差分来实现,并作为反投影步骤的一部分进行。这两个样本之间的间距定义了滤波操作的低通特性,因此可以针对图像体积中的每个点单独选择。我们在此定义样本间距以遵循发散束几何结构的放大率,从而获得一种用于圆形CB-CT的新颖的深度相关滤波算法。我们使用计算机模拟的CB数据评估所得算法,并证明与Feldkamp方法相比,我们的算法产生的结果在空间分辨率和图像噪声在视野上的分布更加均匀。