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Efficient MLP digital implementation on FPGA

机译:在FPGA上高效的MLP数字实现

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The efficiency and the accuracy of a digital feedforward neural networks must be optimized to obtain both high classification rate and minimum area on chip. In this paper an efficient MLP digital implementation. The key features of the hardware implementation are the virtual neuron based architecture and the use of the sinusoidal activation function for the hidden layer. The effectiveness of the proposed solutions has been evaluated developing different FPGA based neural prototypes for the high energy physics domain and the automatic road sign recognition domain. The use of the sinusoidal activation function decreases hardware resource employment of about 32% when compared with the standard sigmoid based neuron implementation. The virtual neuron implementation makes efficient the mapping of a neural network into hardware devices since it leads to a significant decreasing of concurrent memory access.
机译:必须优化数字前馈神经网络的效率和准确性,以同时获得较高的分类率和最小的芯片面积。本文提出了一种有效的MLP数字实施方案。硬件实现的关键特征是基于虚拟神经元的体系结构以及对隐藏层使用正弦曲线激活功能。已针对高能量物理领域和自动道路标志识别领域开发了不同的基于FPGA的神经原型,从而评估了所提出解决方案的有效性。与基于标准S形神经元的实现相比,使用正弦曲线激活函数可减少约32%的硬件资源使用。虚拟神经元实现可有效地将神经网络映射到硬件设备,因为它会导致并行内存访问的显着减少。

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