What Strikes the Strings of Your Heart?–Multi-Label Dimensionality Reduction for Music Emotion Analysis via Brain Imaging

Yang Liu, Yan Liu, Yu Zhao, K. Hua
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引用次数: 14

Abstract

After 20 years of extensive study in psychology, some musical factors have been identified that can evoke certain kinds of emotions. However, the underlying mechanism of the relationship between music and emotion remains unanswered. This paper intends to find the genuine correlates of music emotion by exploring a systematic and quantitative framework. The task is formulated as a dimensionality reduction problem, which seeks the complete and compact feature set with intrinsic correlates for the given objectives. Since a song generally elicits more than one emotion, we explore dimensionality reduction techniques for multi-label classification. One challenging problem is that the hard label cannot represent the extent of the emotion and it is also difficult to ask the subjects to quantize their feelings. This work tries utilizing the electroencephalography (EEG) signal to solve this challenge. A learning scheme called EEG-based emotion smoothing ( E2S) and a bilinear multi-emotion similarity preserving embedding (BME-SPE) algorithm are proposed. We validate the effectiveness of the proposed framework on standard dataset CAL-500. Several influential correlates have been identified and the classification via those correlates has achieved good performance. We build a Chinese music dataset according to the identified correlates and find that the music from different cultures may share similar emotions.
是什么触动了你的心弦?基于脑成像的多标签降维音乐情感分析
经过20年的心理学广泛研究,已经确定了一些音乐因素可以唤起某些情绪。然而,音乐和情感之间关系的潜在机制仍未得到解答。本文试图通过探索一个系统的、定量的框架来寻找音乐情感的真正关联。该任务被表述为一个降维问题,它寻求给定目标具有内在相关性的完整和紧凑的特征集。由于一首歌通常会引发不止一种情绪,我们探索了多标签分类的降维技术。一个具有挑战性的问题是,硬标签不能代表情绪的程度,也很难要求受试者量化他们的感受。本文尝试利用脑电图(EEG)信号来解决这一难题。提出了一种基于脑电图的情感平滑(E2S)学习方案和双线性多情感相似度保持嵌入(BME-SPE)算法。我们在标准数据集CAL-500上验证了所提出框架的有效性。确定了几个有影响的相关因素,并通过这些相关因素进行分类取得了良好的效果。我们根据识别出的相关性建立了一个中国音乐数据集,并发现来自不同文化的音乐可能具有相似的情感。
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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来源期刊
IEEE Transactions on Autonomous Mental Development
IEEE Transactions on Autonomous Mental Development COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE-ROBOTICS
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