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首页> 外文期刊>ACM Journal on Emerging Technologies in Computing Systems >A Multi-Level-Optimization Framework for FPGA-Based Cellular Neural Network Implementation
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A Multi-Level-Optimization Framework for FPGA-Based Cellular Neural Network Implementation

机译:基于FPGA的蜂窝神经网络实现的多级优化框架

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Cellular Neural Network (CeNN) is considered as a powerful paradigm for embedded devices. Its analog and mix-signal hardware implementations are proved to be applicable to high-speed image processing, video analysis, and medical signal processing with its efficiency and popularity limited by smaller implementation size and lower precision. Recently, digital implementations of CeNNs on FPGA have attracted researchers from both academia and industry due to its high flexibility and short time-to-market. However, most existing implementations are not well optimized to fully utilize the advantages of FPGA platform with unnecessary design and computational redundancy that prevents speedup. We propose a multi-level-optimization framework for energy-efficient CeNN implementations on FPGAs. In particular, the optimization framework is featured with three level optimizations: system-, module-, and design-space-level, with focus on computational redundancy and attainable performance, respectively. Experimental results show that with various configurations our framework can achieve an energy-efficiency improvement of 3.54x and up to 3.88x speedup compared with existing implementations with similar accuracy.
机译:蜂窝神经网络(Cenn)被认为是嵌入式设备的强大范例。其模拟和混合信号硬件实现被证明适用于高速图像处理,视频分析和医疗信号处理,其效率和普及受较小的实现尺寸和较低精度的限制。最近,由于其高灵活性和短暂的时间,FPGA对FPGA的数字实现吸引了学术界和行业的研究人员。但是,大多数现有的实现都没有得到充分优化,以充分利用FPGA平台的优势,具有不必要的设计和可防止加速的计算冗余。我们为FPGA的节能Cenn实现提出了一种多级优化框架。特别是,优化框架具有三个级别优化:系统,模块和设计空间级,专注于计算冗余和可达到的性能。实验结果表明,随着各种配置,我们的框架可以实现3.54倍的能量效率提高,而且与具有相似精度相似的实现相比,加速度高达3.88倍。

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