Improvement Of Image Quality Using Convolutional Neural Networks Method

A. Nugroho, Ipung Permadi, Muhammad Faturrahim
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引用次数: 3

Abstract

Abstract. Purpose: This desire for high resolution stems from two main application areas, namely improving pictorial information for human interpretation and assisting automatic machine perception in representing images or videos. Image resolution describes the detail contained in an image, the higher the resolution, the more detail there is. The resolution of a digital image can be classified into various types, namely pixel resolution, spatial resolution, temporal resolution, and radiometric resolution. In this context, we are interested in spatial resolution.Methods: Elements of a digital image consist of a collection of small images called pixels. Spatial resolution refers to the pixel density of an image and is measured in pixels per unit area. A quality digital image is determined by the size of the resolution it has. A low resolution or low-resolution is a drawback of a digital image because the information contained in the image means little compared to a high-resolution image.Result: Therefore, in this study, a digital image processing program was created in the form of Image Super-Resolution with the Convolutional Neural Network method to utilize low-resolution images to produce high-resolution images. With a fairly short training process, namely 6050 datasets with 100 CNN epochs, the average PSNR image is 5% higher.Novelty: Image quality can be improved by changing the parameters in the CNN method so that image quality can be improved.
用卷积神经网络方法改进图像质量
摘要目的:这种对高分辨率的渴望源于两个主要的应用领域,即改善人类解释的图像信息和协助自动机器感知表示图像或视频。图像分辨率描述图像中包含的细节,分辨率越高,细节越多。数字图像的分辨率可以分为多种类型,即像素分辨率、空间分辨率、时间分辨率和辐射分辨率。在这种情况下,我们对空间分辨率感兴趣。方法:数字图像的元素由称为像素的小图像的集合组成。空间分辨率是指图像的像素密度,以单位面积的像素为单位进行测量。数字图像的质量是由它的分辨率大小决定的。低分辨率或低分辨率是数字图像的一个缺点,因为与高分辨率图像相比,图像中包含的信息意义不大。结果:因此,本研究采用卷积神经网络方法,以图像超分辨率(image Super-Resolution)的形式创建了数字图像处理程序,利用低分辨率图像生成高分辨率图像。在较短的训练过程中,即6050个数据集和100个CNN epoch,平均PSNR图像提高了5%。新颖性:通过改变CNN方法中的参数,可以提高图像质量,从而提高图像质量。
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13
审稿时长
24 weeks
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