基于矩量和神经网络的图像噪声自动识别

P. Vasuki, S. Mohamed Mansoor Roomi, C. Bhavana, E. L. Deebikaa
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引用次数: 13

摘要

从原始图像中识别噪声仍然是图像处理中的一个具有挑战性的研究,并且对于抵消不必要的滤波过程的影响至关重要。在图像捕获、传输或处理过程中,噪声被添加到图像中,并降低任何图像处理算法的性能。在去噪之前,应该对图像进行测试以识别噪声。虽然文献中已经介绍了几种用于噪声识别的方法,但每种方法都有自己的假设,优点不是通用的。本文提出了一种基于统计特征的神经网络分类器在不需要人工干预的情况下识别图像中不同类型的高斯白噪声、盐胡椒噪声、斑点噪声等噪声的新方法。对各种图像的大量仿真表明,该方法可以有效地识别给定图像中的噪声。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Automatic noise identification in images using moments and neural network
Identifying noise from the original image is still a challenging research in image processing and is essential in order to counter the effects of unnecessary filtering process. Noise gets added to an image during image capture, transmission, or processing and degrades the performance of any image processing algorithms. Prior to de-noising step, the image should be tested for the identification of noise. Though Several approaches have been introduced in literature earlier for noise identification, each has its own assumption, advantages are not generic. This paper proposes a novel method based on statistical features with neural network classifier to identify the different types of noises such as Additive white Gaussian Noise, Salt & pepper Noise, Speckle Noise in the image without the human intervention. Extensive simulations on variety of images show that the proposed method effectively identifies the noise in a given image.
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