Urban soundscape prediction based on acoustic ecology and MFCC parameters

A. Noviyanti, A. Sudarsono, Dian Kusumaningrum
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引用次数: 2

Abstract

Many studies have been conducted to predict urban soundscape based on acoustic parameters. In this study, the prediction of urban soundscape composition based on acoustic ecology and MFCC parameters is conducted using binary logistic regression. Six parameters of acoustic ecology (ACI, ADI, AEI, BI, H, and NDSI) and 12 MFCC parameters were used to predict the perception of relaxation, dynamic and communication. A dataset of 600 urban sonic environment compositions with the perception ratings (based on the perception of relaxation, dynamic, and communication) was used in this study. The acoustic ecology and MFCC parameters were calculated from the sonic environment composition audio files. The analysis using binary logistic regression shows that parameters of MFCC give significant level at 90 % for the perception of relaxation, dynamic, and communication. The model prediction based on the significant parameter gives the Correct Classification Rate : relaxation (CCR = 88.3 %), dynamic (CCR = 77.6 %), and communication (CCR = 59.3 %). The results indicate that the parameter of MFCC could be a better predictor of sound perception rather than the acoustic ecology.
基于声生态学和MFCC参数的城市声景观预测
基于声学参数的城市声景观预测研究已经开展了很多。基于声生态和MFCC参数,采用二元logistic回归方法对城市声景观组成进行预测。采用6个声学生态参数(ACI、ADI、AEI、BI、H、NDSI)和12个MFCC参数预测松弛感知、动态感知和通信感知。本研究使用了600个城市声音环境组合的数据集,并对其进行了感知评级(基于放松、动态和交流的感知)。从声环境合成音频文件中计算声生态和MFCC参数。二元逻辑回归分析表明,MFCC参数对放松、动态和交流感知的显著性水平为90%。基于显著性参数的模型预测给出了正确的分类率:松弛(CCR = 88.3%)、动态(CCR = 77.6%)和通信(CCR = 59.3%)。结果表明,MFCC参数能更好地预测声感知,而不是声生态。
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