A Continuous Hidden Markov Algorithm-Based Multimedia Melody Retrieval System for Music Education

Q3 Decision Sciences Journal of ICT Standardization Pub Date : 2024-03-01 DOI:10.13052/jicts2245-800X.1211
Yingjie Cheng
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Abstract

Education professionals receive instruction in Music Education (ME) to prepare for prospective jobs like secondary or primary music teachers, schools ensembles executives, or ensembles directors at music institutions. In the discipline of music education, educators do original research on different approaches to teaching and studying music. The most accurate and effective method of extracting music from huge music databases has become one of the most frequently discussed participants in contemporary multimedia information retrieval development. The essence of multimedia material is presented within a range of techniques since it is not bound to a single side. These several categories could consist of the song's audio components and lyrics for musical information. Retrieving melodic information, subsequently, becomes the main focus of most recent studies. Aside from being an expensive deviate from academics, music programs are neither a viable profession neither a valid pastime. Therefore, in this study, we offer a Continuous Hidden Markov Algorithm (CHMA) related a novel method for recovering melodies from musical multimedia recordings. CHMA is considered to be the most basic dynamic Bayesian network. Two various types of audio frame features and audio example features are extracted throughout the feature extraction procedure from the audio signal according to unit length. Every music clip receives a unique approach that we implement with concurrently using various CHMA. The initial music gets processed using a trained CHMA that monitors fundamental frequencies, maps states, and generates retrieval outcomes. The training time for Traditional opera reached 455.76 minutes, the testing time for Narration achieved 56.10 minutes, and the recognition accuracy for advertisement reached an impressive 98.02%. A subsequently experimental result validates the applicability of the proposed approach.
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基于连续隐马尔可夫算法的音乐教育多媒体旋律检索系统
教育专业人士接受音乐教育(ME)的指导,为未来的工作做准备,如中学或小学音乐教师、学校乐团执行官或音乐院校的乐团指挥。在音乐教育学科中,教育工作者对不同的音乐教学和研究方法进行原创性研究。从庞大的音乐数据库中提取音乐的最准确、最有效的方法已成为当代多媒体信息检索发展中最常讨论的问题之一。多媒体资料的本质是在一系列技术中呈现出来的,因为它并不局限于一个方面。这些类别可以包括歌曲的音频成分和歌词等音乐信息。因此,检索旋律信息成为近期研究的重点。除了学费昂贵之外,音乐课程既不是一种可行的职业,也不是一种有效的消遣。因此,在本研究中,我们提出了一种与连续隐马尔可夫算法(CHMA)相关的从音乐多媒体录音中恢复旋律的新方法。CHMA 被认为是最基本的动态贝叶斯网络。在整个特征提取过程中,根据单位长度从音频信号中提取两种不同类型的音频帧特征和音频示例特征。每个音乐片段都会采用一种独特的方法,我们同时使用各种 CHMA 来实现这种方法。初始音乐通过训练有素的 CHMA 进行处理,CHMA 监测基频、映射状态并生成检索结果。传统戏曲的训练时间达到了 455.76 分钟,旁白的测试时间达到了 56.10 分钟,广告的识别准确率达到了令人印象深刻的 98.02%。随后的实验结果验证了建议方法的适用性。
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来源期刊
Journal of ICT Standardization
Journal of ICT Standardization Computer Science-Information Systems
CiteScore
2.20
自引率
0.00%
发文量
18
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