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An effective image denoising using PPCA and classification of CT images using artificial neural networks

机译:利用人工神经网络使用PPCA的有效图像去噪和CT图像分类

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The main aim of denoising is to remove the noise while recollecting as much possible important signal features. This appears to be very simple when considered under practical situations, where the type of images and noises are all variable parameters. This paper deals with removal of combination of noises from image and classification of normal and abnormal images. At first phase, median filter is used to remove the noises present in the images. To improve the denoised output, we are using PSM and PPCA with morphological operations, filter and region props. In the second phase, to analyse the denoised output, neural network-based classification is proposed. The use of artificial intelligent techniques for classification shows a great potential in this field. Hence the performance of neural network classifier is estimated in terms of training performance and classification accuracy and is compared with the existing method to show the system is effective.
机译:去噪的主要目的是消除噪音,同时回忆起尽可能多的重要信号特征。 当在实际情况下考虑时,这似乎非常简单,其中图像类型和噪声是所有可变参数。 本文涉及从图像和正常图像的图像和分类中移除噪声的组合。 在第一阶段,中值滤波器用于去除图像中存在的噪声。 为了改善去噪输出,我们使用PSM和PPCA具有形态学操作,过滤器和区域道具。 在第二阶段,分析去噪输出,提出了神经网络的分类。 用于分类的人工智能技术在这场领域显示出巨大的潜力。 因此,在训练性能和分类准确性方面估计了神经网络分类器的性能,并与现有方法进行比较,以显示系统是有效的。

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