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High precision FPGA implementation of neural network activation functions

机译:神经网络激活功能的高精度FPGA实现

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The efficient implementation of artificial neural networks in FPGA boards requires tackling several issues that strongly affect the final result. One of these issues is the computation of the neuron's activation function. In this work, a detailed analysis of the FPGA implementations of the Sigmoid and Exponential functions is carried out, in a approach combining a lookup table with a linear interpolation procedure. Further, to optimize board resources utilization, a time division multiplexing of the multiplier attached to the neurons was used. The results are evaluated in terms of the absolute and relative errors obtained and also through measuring a quality factor and the resource utilization, showing a clear improvement in relationship to previously published works.
机译:在FPGA板上高效实现人工神经网络需要解决几个会严重影响最终结果的问题。这些问题之一是神经元激活功能的计算。在这项工作中,采用结合了查找表和线性插值过程的方法,对Sigmoid和指数函数的FPGA实现进行了详细分析。此外,为了优化电路板资源利用率,使用了与神经元相连的乘法器的时分复用。根据获得的绝对和相对误差以及通过测量质量因子和资源利用情况对结果进行评估,表明与先前发表的作品之间的关系有了明显的改善。

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