海报:使用传播和反向传播方法的GPU加速超声断层扫描

P. Bello, Yuanwei Jin, E. Lu
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引用次数: 2

摘要

本文提出了利用图形处理单元(gpu)加速传播和反向传播(PBP)层析成像算法的实现策略和方法。计算统一设备架构(CUDA)编程模型用于开发我们的并行算法,因为CUDA模型允许用户比传统的着色器方法更有效地与GPU资源交互。结果表明,与C/ c++版本的算法相比,该算法提高了80倍以上,与MATLAB版本相比提高了515倍,同时实现了两种情况下的高质量成像。为了测量算法处理时间的变化,我们测试了不同的CUDA内核配置。通过检查加速速率和图像质量,我们开发了一个优化的内核配置,最大限度地提高了PBP方法CUDA实现的吞吐量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Poster: GPU Accelerated Ultrasonic Tomography Using Propagation and Backpropagation Method
This paper develops implementation strategy and method to accelerate the propagation and backpropagation (PBP) tomographic imaging algorithm using Graphic Processing Units (GPUs). The Compute Unified Device Architecture (CUDA) programming model is used to develop our parallelized algorithm since the CUDA model allows the user to interact with the GPU resources more efficiently than traditional shader methods. The results show an improvement of more than 80x when compared to the C/C++ version of the algorithm, and 515x when compared to the MATLAB version while achieving high quality imaging for both cases. We test different CUDA kernel configurations in order to measure changes in the processing-time of our algorithm. By examining the acceleration rate and the image quality, we develop an optimal kernel configuration that maximizes the throughput of CUDA implementation for the PBP method.
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