基于fpga的二维标记硬件加速器

Xianfu Xu, Wenjun Su, Bin Li, Yini Wei, Deyu Kong, Hongjie Zeng, Xuejun Zhang
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引用次数: 0

摘要

二维标记算法由于其优越的图像处理质量而被广泛应用。随着图像处理要求的不断提高,产生了巨大的计算工作量,该算法的高效实时实现非常具有挑战性。近年来,在gpu上加速二维标记算法的研究取得了快速进展。然而,GPU设备通常会带来大量的能耗,因此不适合在嵌入式场景中广泛应用。在本文中,我们提出了一种高度集成的医学图像处理通用硬件加速器,以有效提高二维标记算法的计算性能,降低FPGA器件的功耗。本设计将图像去噪、边缘检测和图像分割算法集成在一个基于深度流水线框架的硬件IP核中,通过并行计算和数据重用,可以有效提高医学图像密集处理过程中2D Labeling算法的速度。该设计在Xilinx ZYNQ XC7Z020上实现,与基于先进的NVIDIA GeForce GTX 1660 Super和Intel(R) Core (TM) i7-10700 cpu的软件设计相比,能耗非常低,计算性能分别提高了1.3倍和2.1倍。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An FPGA-Based Hardware Accelerator for 2D Labeling
The 2D Labeling algorithm is used in many applications due to its superior image processing quality. As the requirements of image processing continue to increase, generating huge computational workloads, the efficient real-time implementation of this algorithm is very challenging. In recent years, research on accelerating 2D Labeling algorithms on GPUs has made rapid progress. However, GPU devices usually bring a large amount of energy consumption and are therefore not suitable for a wide range of applications in embedded scenarios. In this paper, we propose a highly integrated general-purpose hardware accelerator for medical image processing to effectively improve the computational performance of 2D Labeling algorithms and reduce the power consumption of FPGA devices. The design integrates image denoising, edge detection, and image segmentation algorithms in a hardware IP core based on a deep pipelining framework, which can effectively improve the speed of 2D Labeling algorithm during intensive medical image processing through parallel computing and data reuse. The design is implemented on Xilinx ZYNQ XC7Z020, and we consume very less energy and improve the computational performance by 1.3 and 2.1 times, respectively, compared to the software design based on advanced NVIDIA GeForce GTX 1660 Super and Intel(R) Core (TM) i7-10700 CPUs.
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