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Efficient impulse noise removal using hybrid neuro-fuzzy filter with optimized intelligent water drop technique

机译:使用混合神经模糊滤波器和优化的智能水滴技术有效去除脉冲噪声

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摘要

Impulse noise (IN) affects the digital image, during transmission, digital storage, and image acquisition. IN removal from an image is necessary as it retains the quality of the image. This work concentrates on the IN. A neuro-fuzzy (NF) system based on a fuzzy technique which is trained by a learning algorithm derived from neural network theory was implemented for the removal of noise. A NF network for noise filtering in grayscale images that combines two NF filters with a postprocessor to produce the output was presented. However, Sugeno-type is not intuitive technique and it also less accurate. To overcome these problems, a hybrid NF filter with optimized intelligent water drop (IWD) technique is introduced, where hybridized Sugeno-Mamdani-based fuzzy interference system is implemented in both the NF filters to obtain more efficient noise removal system. To improve the accuracy of the assignment of membership values to each input pixels, the optimized IWD technique is utilized, as the choice of membership function decides the efficiency of the noise removal in the images. Here, Fuzzy rules have been used to obtain the filtered output. The Hybrid method maintains the accuracy of the Sugeno model and also the interpretable capability of the Mamdani model. This method is robust against the IN and it is flexible, efficient, and accurate than existing filtering method in both noise attenuation and detail preservation and it has a great scope for better real-time applications.
机译:脉冲噪声(IN)在传输,数字存储和图像采集期间会影响数字图像。从图像中去除IN是必要的,因为它可以保留图像的质量。这项工作集中在IN上。实施了一种基于模糊技术的神经模糊(NF)系统,该系统由从神经网络理论派生的学习算法进行训练,以消除噪声。提出了一种用于灰度图像中噪声过滤的NF网络,该网络将两个NF滤波器与一个后处理器结合在一起以产生输出。但是,Sugeno型不是直观的技术,而且准确性也较低。为了克服这些问题,引入了具有优化的智能水滴(IWD)技术的混合NF滤波器,其中在两个NF滤波器中均实现了基于Sugeno-Mamdani的混合模糊干扰系统,以获得更有效的噪声消除系统。为了提高隶属值分配给每个输入像素的准确性,使用了优化的IWD技术,因为隶属函数的选择决定了图像中噪声去除的效率。此处,模糊规则已用于获取滤波后的输出。混合方法保持Sugeno模型的准确性以及Mamdani模型的可解释能力。这种方法对IN的鲁棒性强,在噪声衰减和细节保留方面都比现有的滤波方法灵活,高效和准确,并且为更好的实时应用提供了广阔的空间。

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