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Toward parallel optimal computation of ultrasound computed tomography using GPU

机译:使用GPU进行超声计算机断层扫描的并行最佳计算

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In recent years, many research studies have been carried out on ultrasound computed tomography (USCT) for its application prospect in early detection of breast cancer. The synthetic aperture focusing technique (SAFT) widely used for the USCT image reconstruction is highly compute-intensive. Speeding up and optimizing the reconstruction algorithm on the graphics processing units (GPUs) have been highly applied to medical ultrasound imaging field. In this paper, we focus on accelerating the processing speed of SAFT with the GPU, considering its high parallel computation ability. The main computational features of SAFT are discussed to show the degree of computation parallelism. On the basis of the compute unified device architecture (CUDA) programming model and the Single Instruction Multiple Threads (SIMT) model, the optimization of SAFT parallel computation is performed. The proposed method was verified with the radio-frequency (RF) data of the breast phantom and the pig heart in vitro captured by the USCT system developed in the Medical Ultrasound Laboratory. Experimental results show that a 1024×1024 image reconstruction with a single NVIDIA GTX-1050 GPU could be 25 times faster than that with a 3.20-GHz Intel Core-i5 processor without image quality loss. The results also imply that with the increase of the image pixels, the acceleration effect is more notable.
机译:近年来,关于超声计算机断层摄影(USCT)在乳腺癌的早期检测中的应用前景已经进行了许多研究。广泛用于USCT图像重建的合成孔径聚焦技术(SAFT)是高度计算密集型的。在图形处理单元(GPU)上加速和优化重建算法已高度应用于医学超声成像领域。在本文中,考虑到GPU的高并行计算能力,我们将重点放在利用SAFT加速SAFT的处理速度上。讨论了SAFT的主要计算特征,以显示计算并行度。在计算统一设备体系结构(CUDA)编程模型和单指令多线程(SIMT)模型的基础上,对SAFT并行计算进行了优化。该方法已通过医学超声实验室开发的USCT系统在体外捕获的乳房幻像和猪心脏的射频(RF)数据进行了验证。实验结果表明,使用单个NVIDIA GTX-1050 GPU进行的1024×1024图像重建速度可能比使用3.20 GHz Intel Core-i5处理器的图像重建速度快25倍。结果还暗示,随着图像像素的增加,加速效果更加显着。

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