卷积自编码器图像去噪

Abdul Ghafar, Usman Sattar
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引用次数: 3

摘要

图像去噪是一种去除图像中的噪声以获得清晰图像的过程。它主要用于医学成像,由于机器故障或由于采取预防措施以保护患者免受辐射,医学成像机器在最终图像中产生大量噪声。在最终打印之前,可以使用几种技术来避免图像中的这种扭曲。自动编码器是最著名的软件,用于在最终打印之前对图像进行降噪。这些软件不是智能的,因此生成的图像质量不高。本文介绍了一种改进的基于深度卷积神经网络的自编码器。与传统的自动编码器相比,它可以创建更好的图像质量。在张量板上使用测试数据集进行训练后,在具有不同形状的不同数据集上对修改后的自编码器进行测试。由于几个原因,结果是令人满意的,但并不理想。尽管如此,我们提出的系统仍然比传统的自编码器表现更好。关键词:图像去噪,深度学习,卷积神经网络,图像自编码器,图像卷积自编码器
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Convolutional Autoencoder for Image Denoising
Image denoising is a process used to remove noise from the image to create a sharp and clear image. It is mainly used in medical imaging, where due to the malfunctioning of machines or due to the precautions taken to protect patients from radiation, medical imaging machines create a lot of noise in the final image. Several techniques can be used in order to avoid such distortions in the image before their final printing. Autoencoders are the most notable software used to denoise images before their final printing. These software are not intelligent so the resultant image is not of good quality. In this paper, we introduced a modified autoencoder having a deep convolutional neural network. It creates better quality images as compared to traditional autoencoders. After training with a test dataset on the tensor board, the modified autoencoder is tested on a different dataset having various shapes. The results were satisfactory but not desirable due to several reasons. Nevertheless,  our proposed system still performed better than traditional autoencoders. KEYWORDS: image denoising, deep learning, convolutional neural network, image autoencoder, image convolutional autoencoder
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