Performance-vetted 3-D MAC processors for parallel volumetric convolution algorithm: A 256×256×20 MRI filtering case study

S. Hasan
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引用次数: 19

Abstract

3-D raw data collections introduce noise and artifacts that need to be recovered from degradation by an automated filtering system before further machine analysis. Serving this goal, five performance-efficient FPGA-prototyped processors are devised to realize parallel 3-D “filtering algorithm”. These parallel processors tackle the major bottlenecks and limitations of existing multiprocessor systems in input volumetric data, processing word-length, output boundary conditions and inter-processor communications. Then, greyscale 256×256×20 MRI case study are efficiently filtered and improved by a class of common convolution operators and their developed ones respectively. Analytically, the performance of the five implemented processors are evaluated in term of area, speed, dynamic power, and throughput. All five processors efficiently perform in high real-time throughput up to (114 VPS), lowest power consumption of down to (64 mW) at maximum operating frequency. The devised processors can be embedded in mobile MRI or fMRI scanner and as a pre-filtering stage in any portable automated fMRI systems.
性能审查的3-D MAC处理器并行体积卷积算法:256×256×20 MRI过滤案例研究
3-D原始数据收集会引入噪声和伪影,需要在进一步的机器分析之前通过自动过滤系统从退化中恢复。为此,设计了5个高性能fpga原型处理器,实现并行三维“滤波算法”。这些并行处理器解决了现有多处理器系统在输入体积数据、处理字长、输出边界条件和处理器间通信方面的主要瓶颈和限制。然后分别用一类常用卷积算子及其发展算子对灰度256×256×20 MRI病例研究进行有效过滤和改进。从面积、速度、动态功耗和吞吐量等方面分析了这五种处理器的性能。在最高工作频率下,所有5个处理器的实时吞吐量高达(114 VPS),功耗最低至(64 mW)。所设计的处理器可以嵌入到移动MRI或fMRI扫描仪中,并作为任何便携式自动fMRI系统的预滤波阶段。
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