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SVM-based Filter Using Evidence Theory and Neural Network for Image Denosing

机译:基于证据理论和神经网络的基于SVM的图像去噪

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This paper presents a novel decision-based fuzzy filter? based on support vector machines and Dempster-Shafer? evidence theory for effective noise suppression and detail preservation. The proposed filter uses an SVM impulse detector to judge whether an input pixel is noisy. Sources of evidence are extracted, and then the fusion of evidence based on the evidence theory provides a feature vector that is used as the input data of the proposed SVM impulse detector. A fuzzy filtering mechanism, where the weights are constructed using a counter-propagation neural network, is employed. Experimental results shows that the proposed filter has better performance in terms of noise suppression and detail preservation.
机译:本文提出了一种新颖的基于决策的模糊滤波器?基于支持向量机和Dempster-Shafer?有效的噪声抑制和细节保留的证据理论。所提出的滤波器使用SVM脉冲检测器来判断输入像素是否有噪声。提取证据来源,然后基于证据理论的证据融合提供了一个特征向量,该特征向量被用作所提出的SVM脉冲检测器的输入数据。使用模糊滤波机制,其中权重是使用反向传播神经网络构造的。实验结果表明,所提出的滤波器在噪声抑制和细节保留方面具有更好的性能。

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