A Novel Model for Large-Scale Online College Learning in Postpandemic Era: AI-Driven Approach

Cong Wang
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Abstract

COVID-19 is a pandemic with a wide reach and explosive magnitude, and the world has been bracing itself for impact. Many have lost their jobs and savings, and many are homeless. For better or worse, COVID-19 has permanently changed our lives. For college students, the pandemic means giving up most of the on-campus experience in the postpandemic era and performing online learning instead. Virtual lessons may become a permanent part of college education. Large-scale online learning typically utilizes interactive live video streaming. In this study, we analyzed a codec and video streaming transmission protocol using artificial intelligence. First, we studied an intraframe prediction optimization algorithm for the H.266 codec based on long short-term memory networks. In terms of video streaming transmission protocols, real-time communication optimization based on Quick UDP Internet connections and Luby Transform codes is proposed to improve the quality of interactive live video streaming. Experimental results demonstrate that the proposed strategy outperforms three benchmarks in terms of video streaming quality, video streaming latency, and average throughput.
大流行后时代大规模在线大学学习的新模式:人工智能驱动方法
2019冠状病毒病是一场影响范围广、强度大的流行病,世界一直在准备应对影响。许多人失去了工作和积蓄,许多人无家可归。无论好坏,COVID-19已经永久地改变了我们的生活。对于大学生来说,疫情意味着放弃大部分后疫情时代的校园体验,转而进行在线学习。虚拟课程可能成为大学教育的一个永久组成部分。大规模在线学习通常利用交互式实时视频流。在本研究中,我们分析了一种使用人工智能的编解码器和视频流传输协议。首先,我们研究了基于长短期记忆网络的H.266编解码器帧内预测优化算法。在视频流传输协议方面,提出了基于快速UDP Internet连接和Luby Transform编码的实时通信优化,以提高交互式直播视频流的质量。实验结果表明,该策略在视频流质量、视频流延迟和平均吞吐量方面优于三个基准测试。
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