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A “Salt and Pepper” Noise Reduction Scheme for Digital Images Based on Support Vector Machines Classification and Regression

机译:基于支持向量机分类和回归的数字图像的“盐和胡椒”降噪方案

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We present a new impulse noise removal technique based on Support Vector Machines (SVM). Both classification and regression were used to reduce the “salt and pepper” noise found in digital images. Classification enables identification of noisy pixels, while regression provides a means to determine reconstruction values. The training vectors necessary for the SVM were generated synthetically in order to maintain control over quality and complexity. A modified median filter based on a previous noise detection stage and a regression-based filter are presented and compared to other well-known state-of-the-art noise reduction algorithms. The results show that the filters proposed achieved good results, outperforming other state-of-the-art algorithms for low and medium noise ratios, and were comparable for very highly corrupted images.
机译:我们提出了一种基于支持向量机(SVM)的脉冲噪声清除技术。分类和回归既用于减少数字图像中发现的“盐和胡椒”噪音。分类可以识别噪声像素,而回归提供了确定重建值的手段。综合生成SVM所需的培训载体,以保持对质量和复杂性的控制。提出了一种基于先前噪声检测阶段和基于回归的滤波器的改进的中值滤波器,并与其他众所周知的最新的降噪算法进行比较。结果表明,滤波器提出了良好的结果,优于低和中噪声比的其他最先进的算法,并且对于非常高度损坏的图像相当。

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