Pulse excitation mode selection via AI Pipeline to Fully Automate the WUCT System

Ankur Kumar, Mayank Goswami
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Abstract

The parametric optimization for the ultrasound computed tomography system is introduced. It is hypothesized that the pulse characteristic directly affects the information present in the reconstructed profile. The ultrasound excitation modes based on pulse-width modifications are studied to estimate the effect on reconstruction quality. Studies show that the pulse width affects the response of the transducer and, thus, the reconstruction. The ultrasound scanning parameters, mainly pulse width, are assessed and optimally set by an Artificial Intelligence driven process, according to the object without the requirement of a-priori information. The optimization study uses a novel intelligent object placement procedure to ensure repeatability of the same region of interest, a key requirement to minimize the error. Further, Kanpur Theorem 1 is implemented to evaluate the quality of the acquired projection data and discard inferior quality data. Scanning results corresponding to homogeneous and heterogeneous phantoms are presented. The image processing step involves deep learning model evaluating the dice coefficient for estimating the reconstruction quality if prior information about the inner profile is known or a classical error estimate otherwise. The models segmentation accuracy is 95.72 percentage and intersection over union score is 0.8842 on the validation dataset. The article also provides valuable insights about the development and low-level control of the system.
通过人工智能管道选择脉冲激励模式,实现 WUCT 系统的完全自动化
介绍了超声波计算机断层扫描系统的参数优化。假设脉冲特性会直接影响重建轮廓中的信息。研究了基于脉宽修正的超声激励模式,以估计其对重建质量的影响。研究表明,脉冲宽度会影响换能器的响应,从而影响重建效果。超声波扫描参数,主要是脉冲宽度,是由人工智能驱动的过程根据对象进行评估和优化设置的,不需要先验信息。优化研究采用了一种新颖的智能对象置放程序,以确保同一感兴趣区的可重复性,这是误差最小化的关键要求。此外,还采用了坎普尔定理 1 来评估所获取投影数据的质量,并舍弃劣质数据。图中展示了与同质和异质病象相对应的扫描结果。图像处理步骤包括深度学习模式评估骰子系数,以便在已知内部轮廓信息的情况下估算重建质量,或在其他情况下进行经典错误估算。在验证数据集上,模型的分割准确率为 95.72%,intersection over union 分数为 0.8842。文章还就系统的开发和底层控制提供了有价值的见解。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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