基于卷积神经网络的图像质量计算模型分析

Prathima Chilukuri, S. Harshitha, P. Abhiram, S. Susanna, S. Vyshnavi, B. C. Babu
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引用次数: 0

摘要

通过使用人类视觉系统的几个众所周知的特征,评估感知图像质量的客观方法一直试图量化扭曲图像和参考图像之间缺陷(差异)的可见性。它在人类视觉感知高度适应于从场景中获取结构信息的前提下,为基于CNN的质量评估提供了一种不同的互补框架。当将图像与其本身的模糊图像进行比较时,CNN算法的目标是提供有关图像清晰度的信息。它使用FFT结果和单个图像清晰度值。当与模糊的图像进行对比时,CNN算法的目标是揭示有关图像清晰度的信息。这将通过使用每个图像的清晰度值以及照片的FFT值来完成。使用快速傅里叶变换技术是实用的。FFT是一种图像处理工具,可以在空间和傅里叶域中表示图像。因此,图像由FFT在真实和虚拟组件中表示。这可以做图像处理操作,如模糊,边缘检测,阈值,纹理分析,甚至模糊检测,通过查看这些数字。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Analysing Of Image Quality Computation Models Through Convolutional Neural Network
Through the use of several well-known characteristics of the human visual system, objective approaches for evaluating perceptual picture quality have historically attempted to quantify the visibility of defects (differences) between a distorted image and a reference image. It offers a different complementary framework for quality assessment based on the CNN under the premise that human visual perception is highly adapted for obtaining structural information from a scene. When an image is compared to its own blurry image, the CNN algorithm's goal is to offer information on the image's clarity. It uses the FFT results and the individual picture sharpness values for this. When contrasted against a blurry version of itself, the CNN algorithm's goal is to reveal information about the image's clarity. This will be done by using the sharpness values for each image as well as the FFT values for the photos. It is practical to use the Fast Fourier Transform technique. FFT is a tool for image processing that may represent an image in the spatial and Fourier domains. The image is thus represented by the FFT in both real and fictitious components. Thiscan-do image processingoperations like blurring, edge detection, thresholding, texture analysis, and even blur detection, by looking at these numbers.
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