内容传递系统中的神经增强:最新技术和未来方向

Royson Lee, Stylianos I. Venieris, N. Lane
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引用次数: 6

摘要

支持互联网的智能手机和超宽显示屏正在改变各种视觉应用程序,从点播电影和360°视频到视频会议和直播。然而,在各种功能的设备上,在波动的网络条件下健壮地交付视觉内容仍然是一个悬而未决的问题。近年来,深度学习领域在超分辨率和图像增强等任务上的进展,在从低质量图像生成高质量图像方面取得了前所未有的性能,我们将这一过程称为神经增强。在本文中,我们调查了采用神经增强作为实现快速响应时间和高视觉质量的关键组成部分的最先进的内容交付系统。我们首先提出了神经增强模型的部署挑战。然后我们将介绍针对不同用例的系统,并在克服技术挑战时分析它们的设计决策。此外,基于深度学习研究的最新见解,我们提出了有希望的方向,以进一步提高这些系统的体验质量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Neural Enhancement in Content Delivery Systems: The State-of-the-Art and Future Directions
Internet-enabled smartphones and ultra-wide displays are transforming a variety of visual apps spanning from on-demand movies and 360° videos to video-conferencing and live streaming. However, robustly delivering visual content under fluctuating networking conditions on devices of diverse capabilities remains an open problem. In recent years, advances in the field of deep learning on tasks such as superresolution and image enhancement have led to unprecedented performance in generating high-quality images from low-quality ones, a process we refer to as neural enhancement. In this paper, we survey state-of-the-art content delivery systems that employ neural enhancement as a key component in achieving both fast response time and high visual quality. We first present the deployment challenges of neural enhancement models. We then cover systems targeting diverse use-cases and analyze their design decisions in overcoming technical challenges. Moreover, we present promising directions based on the latest insights from deep learning research to further boost the quality of experience of these systems.
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