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基于BPANN噪声检测的反距离加权法滤除椒盐噪声
引用本文:龙敬文,蒲亦非,周激流. 基于BPANN噪声检测的反距离加权法滤除椒盐噪声[J]. 计算机应用研究, 2018, 35(4)
作者姓名:龙敬文  蒲亦非  周激流
作者单位:四川大学 计算机学院,四川大学 计算机学院,四川大学 计算机学院
基金项目:国家自然科学基金资助项目(61571312)
摘    要:针对传统方法滤除高密度椒盐噪声出现模糊和图像细节丢失的问题,提出基于BP神经网络噪声检测的反距离加权插值法(IDWF)滤除椒盐噪声。该算法共分为两步。第一步,使用有监督学习的BP神经网络检测出被椒盐噪声污染的像素点并标记。第二步,使用反距离加权插值法对标记后的噪声图像进行重建。实验结果表明,该算法要优于传统的滤波方法,修复后的图像能够保留更多的细节,拥有更高的峰值信噪比和结构相似性指数,特别是对高密度噪声图像的修复有很好的效果。

关 键 词:椒盐噪声  BP神经网络  噪声检测  脉冲噪声  反距离加权插值
收稿时间:2016-11-09
修稿时间:2018-02-27

Removal of salt and pepper noise by inverse distance weighted based on BPANN noise detection
LONG Jing-wen,PU Yi-fei and ZHOU Ji-liu. Removal of salt and pepper noise by inverse distance weighted based on BPANN noise detection[J]. Application Research of Computers, 2018, 35(4)
Authors:LONG Jing-wen  PU Yi-fei  ZHOU Ji-liu
Affiliation:College of Computer Science,Sichuan University,,
Abstract:In order to solve the problem that use traditional methods to remove high density salt and pepper noise can lead to fuzzy and lose texture information ,this paper proposed inverse distance weighted interpolation method (IDWF)based on check noise by BP neural network to removal salt and pepper noise.This algorithm has two steps.The first step,using supervised learning capability of back-propagation neural network to detect and mark the pixels that are corrupted by salt and paper noise.The second step, using inverse distance weighted interpolation method to reconstruct the marked noise image .The experimental?results?showed that?the algorithm is superior to the traditional filter methods.The restored image retains more detail features and has higher peak signal to noise ratio and structural similarity index.Performance is exceptionally good even for high density noised images.
Keywords:salt and pepper noise   noise detection   BP neural network   impulse noise   inverse distance weighted interpolation
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