婴儿哭声分类的音频特征和DTW算法研究

Xilin Yu, Laishuan Wang, Xian Zhao, Chunmei Lu, X. Long, Wei Chen
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引用次数: 2

摘要

哭泣是婴儿中最常见的现象,据报道,婴儿哭泣有多种原因。婴儿的哭声信号被认为传达了关于婴儿生理和病理状态的许多有用信息。因此,在这项工作中,我们分析了这些音频信号,以分类不同的哭泣原因。该研究特别收集了哭泣信号,包括三个原因,即饥饿,疼痛和不确定。从每段录音中提取除基本声学特征外的修正MFCC特征。通过组间方差检验,选取9个特征进行基于动态时间翘曲(DTW)的匹配处理,对婴儿哭声进行分类。实验结果表明,所选择的9个特征可以有效识别由饥饿、疼痛和其他不确定原因引起的哭声。提出的婴儿哭声分析方法将为设计婴儿生理和病理状态自动检测系统提供有用的信息
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Investigation into Audio Features and DTW Algorithms for Infant Cry Classification
Cry is the most common phenomenon among infants, and it has been reported that babies cry for multiple reasons. Infant cry signals are thought to convey much useful information about the physiological and pathological state of the baby. Hence, in this work we analyzed these audio signals in order to classify different reasons of cries. Cry signals were especially collected for this study including three causes, namely hunger, pain and uncertainty. Modified MFCC features besides basic acoustic features were extracted from each recording. After intergroup variance examination, nine features were selected and subjected to a novel matching process based on Dynamic Time Warping (DTW) for separating infant cries. Experiment results show that nine selected features are effective to recognize cries caused by hunger, pain and other uncertain reasons. The proposed approach for infant cry analysis will provide useful information for designing towards an automatic system for detecting physiological and pathological state of the baby
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