神经形态自适应保边去噪滤波器

A. Irmanova, O. Krestinskaya, A. P. James
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引用次数: 9

摘要

在本文中,我们提出了一种非传感器神经形态视觉去噪空间滤波器的硬件实现。固定窗口形状的均值或中值空间滤波器以其去噪能力而闻名,但其缺点是会使目标边缘模糊。模糊效果随着窗口大小的增加而增加。为了保留边缘信息,我们提出了一种利用神经元检测相似像素并计算平均值的空间滤波器。相邻像素的模拟输入差值通过压控振荡器转换成脉冲链,作为神经元输入。当输入脉冲对神经元的充电等于或大于其阈值时,神经元将被激活,并且像素被识别为相似。神经元对像素的响应序列存储在串行并行输出移位寄存器中。移位寄存器的输出用作平均电路的选择开关的输入,使其成为自适应平均操作,从而产生保持边缘的平均滤波器。利用加州理工学院数据库中的150幅图像进行了系统级硬件仿真,并添加了高斯噪声,以测试所提出的滤波器的边缘保持和去噪能力。通过调整硬件神经元的阈值,使所提出的保边空间滤波器在PSNR和MSE方面达到最优性能,结果优于传统的均值和中值滤波器。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Neuromorphic Adaptive Edge-Preserving Denoising Filter
In this paper, we present an on-sensor neuromorphic vision hardware implementation of denoising spatial filter. The mean or median spatial filters with fixed window shape are known for its denoising ability, however, have the drawback of blurring the object edges. The effect of blurring increases with increase in window size. To preserve the edge information, we propose a spatial filter that uses neurons ability to detect similar pixels and calculate the mean. The analog input differences of neighbornood pixels are converted to a chain of pulses with voltage controlled oscillator and applied as neuron inputs. When the input pulses charge the neuron to equal or greater level than its threshold, the neuron will fire, and pixels are identified as similar. The sequence of the neuron's responses for pixels is stored in the serial-in-parallel-out shift register. The outputs of shift registers are used as input to the selector switches of an averaging circuit making this an adaptive mean operation resulting in an edge preserving mean filter. System level simulation of the hardware is conducted using 150 images from Caltech database with added Gaussian noise to test the robustness of edge-preserving and denoising ability of the proposed filter. Threshold values of the hardware neuron were adjusted so that the proposed edge-preserving spatial filter achieves optimal performance in terms of PSNR and MSE, and these results outperforms that of the conventional mean and median filters.
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