Genre based emotion annotation for music in noisy environment

Yu-Hao Chin, Po-Chuan Lin, Tzu-Chiang Tai, Jia-Ching Wang
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引用次数: 4

Abstract

The music listened by human is sometimes exposed to noise. For example, background noise usually exists when listening to music in broadcasts or lives. The noise will worsen the performance in various music emotion recognition systems. To solve the problem, this work constructs a robust system for music emotion classification in a noisy environment. Furthermore, the genre is considered when determining the emotional label for the song. The proposed system consists of three major parts, i.e. subspace based noise suppression, genre index computation, and support vector machine (SVM). Firstly, the system uses noise suppression to remove the noise content in the signal. After that, acoustical features are extracted from each music clip. Next, a dictionary is constructed by using songs that cover a wide range of genres, and it is adopted to implement sparse coding. Via sparse coding, data can be transformed to sparse coefficient vectors, and this paper computes genre indexes for the music genres based on the sparse coefficient vector. The genre indexes are regarded as combination weights in the latter phase. At the training stage of the SVM, this paper train emotional models for each genre. At the prediction stage, the predictions that obtained by emotional models in each genre are weighted combined across all genres using the genre indexes. Finally, the proposed system annotates multiple emotional labels for a song based on the combined prediction. The experimental result shows that the system can achieve a good performance in both normal and noisy environments.
嘈杂环境下基于体裁的音乐情感标注
人类所听的音乐有时会受到噪音的影响。例如,在广播或生活中听音乐时,背景噪音通常存在。噪声会影响各种音乐情感识别系统的性能。为了解决这一问题,本文构建了一个鲁棒的噪声环境下音乐情感分类系统。此外,在确定歌曲的情感标签时,还会考虑流派。该系统由基于子空间的噪声抑制、类型索引计算和支持向量机(SVM)三大部分组成。首先,系统采用噪声抑制方法去除信号中的噪声内容。然后,从每个音乐片段中提取声学特征。其次,利用涵盖广泛体裁的歌曲构建字典,并采用字典实现稀疏编码。通过稀疏编码,将数据转换为稀疏系数向量,并根据稀疏系数向量计算音乐类型的类型指数。在后期,将类型指标作为组合权重。在支持向量机的训练阶段,本文对每个类型的情感模型进行训练。在预测阶段,使用类型指数对每种类型的情感模型所获得的预测结果进行加权组合。最后,基于组合预测为歌曲标注多个情感标签。实验结果表明,该系统在正常环境和噪声环境下都能取得良好的性能。
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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