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首页> 外文期刊>International journal of computational i >Fast adaptive learning algorithm for sub-band adaptive thresholding function in image denoising
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Fast adaptive learning algorithm for sub-band adaptive thresholding function in image denoising

机译:图像去噪中子带自适应阈值功能的快速自适应学习算法

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摘要

The speed of image denoising by adaptive thresholding approach in Wavelet Transform (WT) domain depends mainly upon the learning algorithm used for optimising the performance of adaptive thresholding function. In this context, in the literature, steepest gradient-based optimisation technique has been used in WT-based thresholding neural network (WT-TNN) approach, which has low learning speed. In this paper, a new computationally efficient approach, that is, Particle Swarm Optimisation (PSO)-bascd approach has been proposed in place of steepest gradient-based approach. The proposed hybrid computing approach utilises the features of WT-TNN approach and enhances the speed of optimisation by PSO technique. It also yields better performance of denoising as compared to WT-TNN approach. In the proposed approach, crucial problem of initialisation of thresholding parameters gets automatically sorted out besides learning time becoming independent of noise level of the image. The proposed approach also enhances edge preservation, when implemented with bior6.8 wavelet filters.
机译:小波变换(WT)域中通过自适应阈值方法进行图像去噪的速度主要取决于用于优化自适应阈值功能性能的学习算法。在这种情况下,在文献中,基于最速梯度的最优化技术已被用于基于WT的阈值神经网络(WT-TNN)方法中,该方法具有较低的学习速度。本文提出了一种新的计算有效方法,即基于粒子群优化(PSO)的方法来代替最陡峭的基于梯度的方法。提出的混合计算方法利用了WT-TNN方法的特性,并提高了PSO技术的优化速度。与WT-TNN方法相比,它还具有更好的去噪性能。在提出的方法中,除了学习时间变得独立于图像的噪声水平之外,阈值参数初始化的关键问题也被自动解决了。当使用bior6.8小波滤波器实现时,所提出的方法还可以增强边缘保留性。

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