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引用次数: 1

摘要

大流行后,网络教学发挥了重要作用。今天,在线教学被认为是教学教学法的一种。这意味着每个老师和教授都在制作在线讲座视频,并分享给学生们以后使用。大多数情况下,视频创作的环境是实时的,无论是在现场教室还是在家里,各种环境噪音都会干扰演示者的实际讲话。因此,有必要识别可能是讲座视频的一部分的各种噪音,以评估视频的质量。这方面的研究很少。研究人员一直在研究加性噪声,但识别卷积噪声是一个挑战。我们建议对视频讲座的音频信号进行处理,以识别各种卷积噪声的位置和持续时间,并测量视频讲座音频部分存在的噪声量。我们使用各种过滤器来识别同时说话、长时间沉默、婴儿哭声、厨房声音和车辆噪音。该方法识别噪声和噪声位置的平均准确率为97.37%。每个片段音频中噪声的MSE取决于存在的各种噪声。这决定了讲座视频的音频质量。
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Audio de-noising and quality assessment for various noises in lecture videos
Online teaching has taken up its importance post-pandemic period. Today, online teaching is considered to be one of the teaching pedagogy. This means every teacher and professor is generating online lecture videos and sharing them for students’ later use. Mostly, the environment for the video creation is in real time either in the live classroom or at home, various environmental noises interfere with the actual speech of the presenter. Therefore, there is a need for identifying the various noises that may be part of the lecture video to assess the quality of the video. Towards this, very few research works are observed. Researchers have worked on additive noises, but identifying convolutional noises is a challenge. We propose to work on the audio signal of the video lectures to identify the positions and durations of various convolutional noises and measure the amount of noise present in the audio part of the video lectures. We used various filters for identifying simultaneous talks, long silences, baby crying, kitchen sounds, and vehicle noises. The average accuracy of the proposed solution in identifying the noises and the noise positions is 97.37%. The MSE of the noise in the audio of each clip varies depending on the various noises present. This defines the quality of the audio in the lecture video.
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