基于音词关键词的菲律宾原创音乐(OPM)歌曲音乐情绪分类研究

Mideth B. Abisado, Mardyon Yongson, Ma. Ian P. De Los Trinos
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引用次数: 1

摘要

本文介绍了菲律宾原创音乐(OPM)歌曲的音乐情绪分类,特别是菲律宾歌曲的音频和歌词信息。这首歌的情绪是通过音乐特征来表达的,但似乎也有相关的部分是通过歌词的关键词来传达的。本研究在两位音乐教师和音乐分析师的帮助下,对每个因素进行独立评估。它探索了两者结合的可能性,使用自然语言处理和音乐信息检索技术。结果表明,基于标准分离的策略和潜在语义分析在分组方面的效果明显优于随机分组。然而,与声音系统相比,这一展示仍然非常不合格。该研究提出了一种依赖于语言模型之间对比的技术,该技术使性能更接近基于声音的分类器,此外,将其缠绕在多模态框架中,即音频和文本。它允许在一般执行改进。我们展示了诗句和声音数据是相对应的,可以结合起来改善一个有序的框架。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Towards the Development of Music Mood Classification of Original Pilipino Music (OPM) Songs Based on Audio and Lyrics Keyword
This paper presents music mood classification of Original Pilipino Music (OPM) songs, particularly Filipino songs using audio and lyrics information. The song's mood is expressed utilizing musical features, but a relevant part also seems to be conveyed by the keywords to its lyrics. The study evaluates with the help of two music teachers and music analysts each factor independently. It explores the possibility of combining both, using Natural Language Processing and Music Information Retrieval techniques. It shows that standard separation-based strategies and Latent Semantic Analysis can group the verses essentially superior to random. Yet, the exhibition is still very substandard compared to that of sound-based systems. The study presents a technique dependent on contrasts between language models that gives performances closer to sound-based classifiers—in addition, interwinding this in a multimodal framework, which is audio and text. It permits an improvement in the general execution. We exhibit that verses and sound data are corresponding and can be joined to improve an ordered framework.
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