基于层次融合的音乐时代分类

M. Pratama, M. Adriani
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引用次数: 2

摘要

音乐时代是一种音乐信息检索研究,它将同一年或同十年间具有相似特征的几首歌曲联系起来,而不局限于特定的流派和情绪。以往的研究者试图利用谱图、色谱图等单一音频特征的分类模型来识别音乐时代,但效果不佳。特征和模型的选择影响分类时代的性能。特征选择的挑战之一是使用多模态或组合音频特征是否能提高音乐时代分类性能。本研究采用层次融合模型,结合声谱图和色谱图等多个音频特征来确定音乐年代。我们使用层次融合模型对印度尼西亚音乐数据集(IMD)和Mimon歌曲数据集(MSD)的时代分类任务获得了83%和73%的总体准确率。IMD数据集实验的总体精度、召回率和F-score结果分别为0.83、0.82、0.82,MSD数据集实验的总体精度、召回率和F-score结果分别为0.73、0.72、0.72。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Music Era Classifcation using Hierarchical-level Fusion
Music era is one of Music Information Retrieval research that connecting several songs with similar characteristics from similar year or decade but not limited to particular genre and mood. Previous researcher tried to recognize musical era with classification model using single audio feature like spectrogram and chromagram, but the performance was poor. Feature and model selection affect classification era performance. One of the challenge in selecting feature is whether the using of multimodal or combination of audio features can improve music era classification performance. In this research, Hierarchical-level fusion model is used to combine several audio features like spectrogram and chromagram to determine music era. We obtained both 83% and 73% overall accuracy for Indonesian Music Dataset (IMD) and Mimon Song Dataset (MSD) of era classification tasks using Hierarchical-level fusion model. This research result also strengthened with overall precision, recall, and F-score result 0.83, 0.82, 0.82 for IMD dataset and 0.73, 0.72, 0.72 for MSD dataset experiment.
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