应用随机共振机制,借助噪声能量实现图像复原,改善低信噪比图像的输出质量.通过分析FitzHugh-Nagumo(FHN)神经元的阈上随机共振机理,以及在相平面上的阈值工作特性,对FHN神经元模型进行约简,以峰值信噪比(PSNR)为图像复原的评价函数,提出基于随机共振的自适应最优图像复原算法.以含噪mountain彩色图像和LED芯片图像为实验对象,与均值滤波、维纳滤波等图像复原算法进行仿真对比研究.结果表明:随机共振方法较好地抑制了噪声、恢复了图像细节和色彩信息,且随着噪声的增强,随机共振方法复原图像的峰值信噪比变化较小,该方法具有较好的鲁棒性.
Based on stochastic resonance(SR) mechanism,the quality of lowsignal-noise-ratio image was improved by adding noise energy. According to analyzing suprathreshold stochastic resonance and thresh-old working characteristic of Fitzhugh-Nagumo(FHN) neuron model at phase space ,the model was simpli-fied.By choosing the peak signal-to-noise ratio(PSNR) as estimation function of the image restoration,a self-adaptive opti mized algorithm of image restoration processing based on RS mechanism was introduced.Anoisy mountain color image ,LED chip image and so on,were chosen as experimental objects ,to com-pare simulation result of image restoration with different algorithm,stochastic resonance restoration,meanfilter restoration and Wiener filter restoration. The results indicate that SR image restoration method isbetter in noise inversion,image detail restoration and color information restoration. Along with the in-creasing of noise intensity ,the peak signal-to-noise ratio of SR restoration images change less than others.This method has good robustness.