Research on Video Quality Diagnosis System Based on Convolutional Neural Network

Yi Hu
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Abstract

In the era of rapid development in modern society, there is an escalating demand for high-performance products. However, this quest for excellence often encounters persistent quality issues during practical applications. Hence, to enhance the user experience and rectify this situation, this paper proposes a Convolutional Neural Network (CNN)-based Video Quality Diagnosis System. The system's design encompasses a myriad of construction methodologies, primary framework structures, and associated databases. This research primarily focuses on video quality during video conferencing as the subject of investigation, with the aim of constructing a Video Quality Diagnosis System grounded in CNN theory. The objective is to provide real-time identification, analysis, and enhancement of video quality, thereby offering timely solutions to issues that arise in the video conferencing experience. In this endeavor, the research amalgamates cutting-edge technology and meticulous study to create a smoother and more immersive video conferencing experience for individuals and organizations. By addressing the frequently encountered video quality issues, we hope to facilitate more effective and engaging communication on a global scale, bridging the gap between user expectations and practical implementation and paving the way for a future where video quality problems are a thing of the past.
基于卷积神经网络的视频质量诊断系统研究
在现代社会飞速发展的时代,人们对高性能产品的需求与日俱增。然而,在实际应用过程中,这种对卓越的追求往往会遇到难以解决的质量问题。因此,为了提升用户体验并纠正这种情况,本文提出了一种基于卷积神经网络(CNN)的视频质量诊断系统。该系统的设计包括大量的构建方法、主要框架结构和相关数据库。本研究主要以视频会议中的视频质量为研究对象,旨在构建一个基于 CNN 理论的视频质量诊断系统。其目的是对视频质量进行实时识别、分析和改进,从而为视频会议体验中出现的问题提供及时的解决方案。在这项工作中,研究将尖端技术与细致研究相结合,为个人和组织创造更流畅、更身临其境的视频会议体验。通过解决经常遇到的视频质量问题,我们希望在全球范围内促进更有效、更吸引人的交流,缩小用户期望与实际实施之间的差距,为未来视频质量问题成为历史铺平道路。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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