Faculty of Science and Engineering, University of Manchester, Manchester, UK.
The Conservatory of Music of Qingdao University, Qingdao, China.
Comput Intell Neurosci. 2022 Sep 21;2022:4718421. doi: 10.1155/2022/4718421. eCollection 2022.
Audio monitoring information technology plays an important role in the application of monitoring systems, and it is an indispensable and important link. Whether intelligent audio monitoring management can be successfully realized, the key is to successfully detect abnormal sounds from a variety of external environment background sounds. The core technology of abnormal sound detection is a pattern classification task. The dimension of features is fixed in the traditional abnormal sound detection model. Such an ordinary solution will lead to a long time-consuming detection process and increase the boundary error. Traditional speech detection is not good enough for sound discrimination in a noisy environment, so this paper proposes an abnormal speech detection technology based on moving edge computing. Aiming at the noisy environment of the music classroom, the determination of objective function should be further optimized. Through the related technology, a certain sound can be quickly identified and analyzed in the music classroom to promote the development of the music wisdom classroom, and music wisdom classrooms can be used as a computer-aided system to help music teachers better grasp the learning situation of students, put forward relevant guidance strategies, improve students' learning enthusiasm, and enhance teachers' teaching efficiency so as to promote the progress of music teaching.
音频监控信息技术在监控系统的应用中起着重要的作用,是不可或缺的重要环节。能否成功实现智能音频监控管理,关键是能否成功地从各种外部环境背景音中检测到异常声音。异常声音检测的核心技术是模式分类任务。在传统的异常声音检测模型中,特征的维度是固定的。这种普通的解决方案将导致耗时的检测过程,并增加边界错误。传统的语音检测在嘈杂环境中的声音识别效果不佳,因此本文提出了一种基于移动边缘计算的异常语音检测技术。针对音乐教室的嘈杂环境,应进一步优化目标函数的确定。通过相关技术,可以在音乐教室内快速识别和分析某个声音,从而促进音乐智慧教室的发展,音乐智慧教室可以作为一个计算机辅助系统,帮助音乐教师更好地掌握学生的学习情况,提出相关的指导策略,提高学生的学习积极性,增强教师的教学效率,从而推动音乐教学的进步。