Feldkamp Joe R
Tayos Corp., 1816 Gallagher Ln, Louisville, CO 80027, USA.
Sensors (Basel). 2024 Apr 24;24(9):2704. doi: 10.3390/s24092704.
MIT (magnetic induction tomography) image reconstruction from data acquired with a single, small inductive sensor has unique requirements not found in other imaging modalities. During the course of scanning over a target, measured inductive loss decreases rapidly with distance from the target boundary. Since inductive loss exists even at infinite separation due to losses internal to the sensor, all other measurements made in the vicinity of the target require subtraction of the infinite-separation loss. This is accomplished naturally by treating infinite-separation loss as an unknown. Furthermore, since contributions to inductive loss decline with greater depth into a conductive target, regularization penalties must be decreased with depth. A pair of squared L2 penalty norms are combined to form a 2-term Sobolev norm, including a zero-order penalty that penalizes solution departures from a default solution and a first-order penalty that promotes smoothness. While constraining the solution to be non-negative and bounded from above, the algorithm is used to perform image reconstruction on scan data obtained over a 4.3 cm thick phantom consisting of bone-like features embedded in agarose gel, with the latter having a nominal conductivity of 1.4 S/m.
基于单个小型感应传感器采集的数据进行的磁感应断层扫描(MIT)图像重建,具有其他成像方式所没有的独特要求。在对目标进行扫描的过程中,测量得到的感应损耗会随着与目标边界距离的增加而迅速减小。由于即使在无限远的距离处,由于传感器内部的损耗,感应损耗依然存在,因此在目标附近进行的所有其他测量都需要减去无限远分离时的损耗。这通过将无限远分离时的损耗视为未知量来自然地实现。此外,由于对感应损耗的贡献会随着进入导电目标的深度增加而下降,正则化惩罚必须随深度降低。一对平方L2惩罚范数被组合起来形成一个二项Sobolev范数,包括一个零阶惩罚项,用于惩罚解偏离默认解的情况,以及一个一阶惩罚项,用于促进平滑性。在将解限制为非负且有上限的同时,该算法被用于对在一个4.3厘米厚的模型上获取的扫描数据进行图像重建。该模型由嵌入琼脂糖凝胶中的类骨特征组成,琼脂糖凝胶的标称电导率为1.4 S/m。