New digital Pulse-Mode Neural Network based image denoising

Amir Gargouri, M. Krid, D. Masmoudi
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引用次数: 1

Abstract

In this paper, we propose a new architecture of Pulse Mode Neural Network (PMNN) with very simple activation function. Pulse mode is gaining support in the field of hardware Neural Networks thanks to its higher density of integration. However, the complexity of the activation functions presents a drawback for hardware implementation of Neural Networks and limits its area of application. In this context, the main idea is to apply a new kind of activation function, simply generated by the product of two sigmoidal functions, which are very simple and already implemented in previous work. Details of important aspects concerning the hardware implementation are given. To verify the performance and capacity of the proposed design, we apply it for approximation of image denoising function. The filtered results are verified in terms of the Peak Signal to Noise Ratio (PSNR). Experimental results reveal that the proposed PMNN filter has a greater ability to recover the informative pixel intensities from the infected image with a recovery of 7.5 dB for Gaussian noise and 5.3 dB for Speckle noise. Besides, such results demonstrate the performance and efficiency of our Neural filter when compared to other conventional filtering techniques. The designed network is implemented on a field-programmable gate array (FPGA) platform and synthesis results are presented and discussed.
基于数字脉冲模式神经网络的图像去噪
本文提出了一种具有简单激活函数的脉冲模神经网络(PMNN)新结构。脉冲模式以其较高的集成密度在硬件神经网络领域得到了广泛的支持。然而,激活函数的复杂性是神经网络硬件实现的一个缺点,限制了神经网络的应用领域。在这种情况下,主要的思想是应用一种新的激活函数,简单地由两个s型函数的乘积生成,这是非常简单的,在以前的工作中已经实现了。给出了有关硬件实现的重要方面的详细信息。为了验证所提设计的性能和能力,我们将其应用于图像去噪函数的逼近。根据峰值信噪比(PSNR)对滤波结果进行了验证。实验结果表明,所提出的PMNN滤波器具有较好的复原能力,高斯噪声复原率为7.5 dB,散斑噪声复原率为5.3 dB。此外,与其他传统滤波技术相比,这些结果证明了神经滤波器的性能和效率。设计的网络在现场可编程门阵列(FPGA)平台上实现,并给出了综合结果并进行了讨论。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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