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Adaptive Image Filtering Based on Convolutional Neural Network

机译:基于卷积神经网络的自适应图像滤波

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The process of digital image acquisition and transmission is easy to be polluted by noise. Noises can also cause disturbances, or even misjudgements in the remote sensing image, face recognition, image classification of machine learning and deep learning. Therefore the correctness and safety of image usage is greatly reduced. Different types of noise may occur under various conditions, and the same filtering method has different effects on different types of noise processing, which makes it difficult to select the best way to filtering the image. So the detection and recognition of noise type has always been a hot topic in the field of information security. However, there are lacking solutions to the current noise type identification problem, and the complexity is very high. In this paper, a convolutional neural network(CNN) model which is able to automatically identify salt and pepper noise, Gauss noise and random noise based on deep learning training is proposed. After that, median filter, mean filter and wiener filter are used to filter the corresponding images. The purpose of ensuring the correctness and security of the image application is achieved. By simulating the images of different noise and analyzing PSNR, it is proved that this method able to distinguish the noise and filter obviously.
机译:数字图像采集和传输的过程易于被噪声污染。噪音也可以造成干扰,甚至在遥感图像中误导,人脸识别,机器学习的图像分类和深度学习。因此,图像使用的正确性和安全性大大减少。在各种条件下可能发生不同类型的噪声,并且相同的滤波方法对不同类型的噪声处理具有不同的影响,这使得难以选择过滤图像的最佳方法。因此,噪声类型的检测和识别始终是信息安全领域的热门话题。但是,缺乏对当前噪声型识别问题的解决方案,并且复杂性非常高。本文提出了一种能够自动识别盐和胡椒噪声,高斯噪声和基于深度学习训练的随机噪声的卷积神经网络(CNN)模型。之后,使用中值滤波器,平均滤波器和维纳滤波器来过滤相应的图像。确保了确保图像应用的正确性和安全性的目的。通过模拟不同噪声和分析PSNR的图像,证明这种方法能够显然区分噪声和滤波器。

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