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Classification of voices that elicit soothing effect by applying a voiced vs. unvoiced feature engineering strategy

机译:通过应用有声与无声特征工程策略来诱发舒缓效果的声音分类

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This paper introduces a novel approach of classifying voices that elicit a soothing effect on listeners from a domain knowledge inspired application of feature engineering. In particular, we utilize the characteristics of voiced vs, unvoiced speech in order to build a more accurate feature set. Large sets of training data are prepared and disciplined feature selections are conducted. Our final classifier achieved 86.84% classification accuracy of cross validation and evaluations by unknown listener population via crowdsourcing have rates of agreement with the classification model range from 80% to 90%. The technologies are deployed into Jobaline products to help service companies identify hourly-job workers whose voice can elicit soothing effect on customers.
机译:本文介绍了一种小型探讨声音的途径,从域知识启发了专业工程的应用程序启发的侦听者的舒缓作用。特别是,我们利用浊音VS,清晰的语音的特征来构建更准确的功能集。准备大量的培训数据,并进行纪律的特征选择。我们的最终分类器通过众包获得了86.84%的交叉验证和评估的分类准确性,并通过众包具有与分类模型的协议率,从80%到90%。该技术部署到Jobaline产品中,以帮助服务公司识别每小时工作人员,其声音可以引起对客户的舒缓影响。

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