AVID: A speech database for machine learning studies on vocal intensity

IF 2.4 3区 计算机科学 Q2 ACOUSTICS
Paavo Alku , Manila Kodali , Laura Laaksonen , Sudarsana Reddy Kadiri
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引用次数: 0

Abstract

Vocal intensity, which is quantified typically with the sound pressure level (SPL), is a key feature of speech. To measure SPL from speech recordings, a standard calibration tone (with a reference SPL of 94 dB or 114 dB) needs to be recorded together with speech. However, most of the popular databases that are used in areas such as speech and speaker recognition have been recorded without calibration information by expressing speech on arbitrary amplitude scales. Therefore, information about vocal intensity of the recorded speech, including SPL, is lost. In the current study, we introduce a new open and calibrated speech/electroglottography (EGG) database named Aalto Vocal Intensity Database (AVID). AVID includes speech and EGG produced by 50 speakers (25 males, 25 females) who varied their vocal intensity in four categories (soft, normal, loud and very loud). Recordings were conducted using a constant mouth-to-microphone distance and by recording a calibration tone. The speech data was labelled sentence-wise using a total of 19 labels that support the utilisation of the data in machine learning (ML) -based studies of vocal intensity based on supervised learning. In order to demonstrate how the AVID data can be used to study vocal intensity, we investigated one multi-class classification task (classification of speech into soft, normal, loud and very loud intensity classes) and one regression task (prediction of SPL of speech). In both tasks, we deliberately warped the level of the input speech by normalising the signal to have its maximum amplitude equal to 1.0, that is, we simulated a scenario that is prevalent in current speech databases. The results show that using the spectrogram feature with the support vector machine classifier gave an accuracy of 82% in the multi-class classification of the vocal intensity category. In the prediction of SPL, using the spectrogram feature with the support vector regressor gave an mean absolute error of about 2 dB and a coefficient of determination of 92%. We welcome researchers interested in classification and regression problems to utilise AVID in the study of vocal intensity, and we hope that the current results could serve as baselines for future ML studies on the topic.

AVID:用于声音强度机器学习研究的语音数据库
语音强度是语音的一个主要特征,通常用声压级 (SPL) 来量化。要测量语音录音的声压级,需要将标准校准音(参考声压级为 94 dB 或 114 dB)与语音一起录制。然而,大多数用于语音和说话人识别等领域的流行数据库都是在没有校准信息的情况下录制的,用任意振幅标度来表达语音。因此,录制语音的声强信息(包括声压级)就丢失了。在当前的研究中,我们引入了一个新的开放式校准语音/电子声门图(EGG)数据库,名为阿尔托声带强度数据库(AVID)。AVID 包括 50 位说话者(25 位男性,25 位女性)的语音和 EGG,他们的声音强度分为四类(轻柔、正常、响亮和非常响亮)。录音时,嘴与麦克风的距离保持不变,并录制校准音。语音数据按句子进行了标注,共使用了 19 个标签,这些标签支持在基于机器学习(ML)的声乐强度研究中使用基于监督学习的数据。为了展示如何利用 AVID 数据研究声乐强度,我们研究了一项多类分类任务(将语音分为柔和、正常、响亮和非常响亮的强度类别)和一项回归任务(预测语音的声压级)。在这两项任务中,我们故意扭曲了输入语音的电平,将信号归一化,使其最大振幅等于 1.0,也就是说,我们模拟了当前语音数据库中普遍存在的情况。结果表明,使用频谱图特征和支持向量机分类器对声音强度进行多类分类的准确率为 82%。在预测声压级时,使用频谱图特征和支持向量回归器得出的平均绝对误差约为 2 dB,决定系数为 92%。我们欢迎对分类和回归问题感兴趣的研究人员在声乐强度研究中使用 AVID,并希望当前的结果可以作为未来有关该主题的 ML 研究的基线。
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
Speech Communication
Speech Communication 工程技术-计算机:跨学科应用
CiteScore
6.80
自引率
6.20%
发文量
94
审稿时长
19.2 weeks
期刊介绍: Speech Communication is an interdisciplinary journal whose primary objective is to fulfil the need for the rapid dissemination and thorough discussion of basic and applied research results. The journal''s primary objectives are: • to present a forum for the advancement of human and human-machine speech communication science; • to stimulate cross-fertilization between different fields of this domain; • to contribute towards the rapid and wide diffusion of scientifically sound contributions in this domain.
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