论文标题

从声音中预测情绪

Predicting Emotions Perceived from Sounds

论文作者

Abri, Faranak, Gutiérrez, Luis Felipe, Namin, Akbar Siami, Sears, David R. W., Jones, Keith S.

论文摘要

SONIFICATY是通过声音向用户传达数据和事件的科学。听觉图标,耳塞和语音是索式化的常见听觉显示方案,或更具体地说是在使用音频传达信息中。一旦感知到捕获的数据,它们的含义和更重要的是,就可以更轻松地解释意图,因此可以用作可视化技术的补充。通过听觉感知,可以传达与时间,空间或其他面向上下文的信息有关的信息。一个重要的研究问题是,从这些听觉图标或耳塞中感知到的情绪是否可以预测,以构建自动超声平台。本文进行了一个实验,通过该实验开发了几种主流和常规的机器学习算法,以研究从声音中感知到的情绪的预测。为此,使用功能还原技术使用机器学习算法对声音的关键特征进行捕获,然后对声音进行建模。我们观察到,有可能以高精度预测感知的情绪。特别是,基于随机森林的回归与其他机器学习算法相比表现出了优势。

Sonification is the science of communication of data and events to users through sounds. Auditory icons, earcons, and speech are the common auditory display schemes utilized in sonification, or more specifically in the use of audio to convey information. Once the captured data are perceived, their meanings, and more importantly, intentions can be interpreted more easily and thus can be employed as a complement to visualization techniques. Through auditory perception it is possible to convey information related to temporal, spatial, or some other context-oriented information. An important research question is whether the emotions perceived from these auditory icons or earcons are predictable in order to build an automated sonification platform. This paper conducts an experiment through which several mainstream and conventional machine learning algorithms are developed to study the prediction of emotions perceived from sounds. To do so, the key features of sounds are captured and then are modeled using machine learning algorithms using feature reduction techniques. We observe that it is possible to predict perceived emotions with high accuracy. In particular, the regression based on Random Forest demonstrated its superiority compared to other machine learning algorithms.

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