Songs Classification Problem Research by Genre Based on Neural Network

Qeios Pub Date : 2024-05-21 DOI:10.32388/59lgk6
Roman Lynnyk, Victoria Vysotska
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Abstract

This article explores the use of neural networks for classifying musical compositions by genre based on their audio characteristics. With the increasing availability of large musical datasets and advancements in computational technologies, this topic has gained significant relevance. The article emphasizes the importance of selecting and processing audio features, particularly focusing on Mel-Frequency Cepstral Coefficients (MFCC), which reflect the key sound characteristics essential for genre identification. The approach to creating a neural network capable of effectively processing these characteristics and classifying songs is examined within the research. It outlines the main challenges associated with classification accuracy, error calculation, and the need to adapt to rapidly changing musical trends. This article also reviews and constructs a test neural network for classifying songs into three genres, creates diagrams to depict classification accuracy, and shows the distribution of each class by frequency characteristics. Additionally, it analyzes recent research in this field and highlights the importance of using MFCC. The article illuminates not only the technical aspects of creating and training neural networks for song classification but also the significance of such systems in the context of the widespread availability of musical content. It underscores the role of these systems in enhancing the quality of recommendation services, providing a more comprehensive musical experience to users, and supporting artists and musical styles. In conclusion, the article contributes valuable insights into the potential of neural networks in song genre classification, pointing to future research and development directions in this area.
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基于神经网络的歌曲流派分类问题研究
本文探讨了如何利用神经网络根据音频特征对音乐作品进行流派分类。随着大型音乐数据集的不断增加和计算技术的不断进步,这一课题已变得越来越重要。文章强调了选择和处理音频特征的重要性,尤其侧重于反映流派识别所必需的关键声音特征的梅尔-频率倒频谱系数(MFCC)。文章研究了创建一个能够有效处理这些特征并对歌曲进行分类的神经网络的方法。文章概述了与分类准确性、误差计算以及需要适应快速变化的音乐趋势相关的主要挑战。本文还回顾并构建了将歌曲分为三种流派的测试神经网络,创建了描述分类准确性的图表,并按频率特性显示了每个类别的分布情况。此外,文章还分析了该领域的最新研究,并强调了使用 MFCC 的重要性。文章不仅阐明了创建和训练用于歌曲分类的神经网络的技术方面,还阐明了此类系统在音乐内容广泛存在的背景下的重要意义。文章强调了这些系统在提高推荐服务质量、为用户提供更全面的音乐体验以及支持艺术家和音乐风格方面的作用。总之,文章对神经网络在歌曲流派分类方面的潜力提出了宝贵的见解,并指出了该领域未来的研究和发展方向。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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