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首页> 外文期刊>Quality Control, Transactions >Multicondition Training for Noise-Robust Detection of Benign Vocal Fold Lesions From Recorded Speech
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Multicondition Training for Noise-Robust Detection of Benign Vocal Fold Lesions From Recorded Speech

机译:良好声音折叠病变的噪声鲁棒检测的多功能训练

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摘要

This study evaluates the effects of Multicondition Training (MCT) on computer aided diagnosis systems for voice quality assessment associated to exudative lesions of Reinke’s space. This technique adds various noise conditions to the speech recordings in order to recreate realistic acoustic environments. Four different databases (Massachussets Eye and Ear Infirmary, UEX-Voice, Saarbrücken, and Hospital Universitario Príncipe de Asturias) recorded in very different acoustic environments are used. We compare the outcomes of random forest classifier models comprising feature selection, hyperparameter tuning, and cross-validation attending the specific MCT schema used to separate healthy from pathological subjects for three diseases (nodules, polyps, and Reinke’s edema). Apart from the clean case baseline, an asymmetric (one subject recording is affected only by one noise recording) and two symmetric (one subject recording is affected by all the noise recordings) noise-based MCT scenarios are considered. These scenarios are created by adding realistic acoustic noise of different types to the sustained /a/ vowel recordings. The symmetric approaches are affected by methodological concerns and are tested with a comparative purpose, to emphasize these issues. Experimental results highlight the drawbacks of symmetric MCTs and exclude these techniques as a viable option. In contrast, asymmetric MCT is proven to be a suitable noise-robust approach to build a diagnosis system for exudative lesions of Reinke’s space, as performance obtained with the resulting classifiers is not far from the performance obtained for clean training.
机译:本研究评估了多功能训练(MCT)对电脑辅助诊断系统的影响,与Reinke空间的渗出性病变相关。该技术在语音记录中增加了各种噪声条件,以便重新创建现实的声学环境。使用四种不同的数据库(Massachysets眼睛和耳朵医务室,Uex-Voice,Saarbrücken和医院UniversitarioPríncipede Asturias)被记录在非常不同的声学环境中。我们比较包括特征选择,超参考和参加特定MCT模式的跨验证的随机森林分类器模型的结果,用于分离3个疾病的病理科目(结节,息肉和Reinke的水肿)分离健康。除了清洁盒基线之外,不对称(仅受一个噪声记录影响一个对象录制)和两个对称(一个对象记录受到所有噪声记录的影响)基于噪声的MCT场景。通过将不同类型的现实声学噪声添加到持续/ A /元音录制来创建这些方案。对称方法受到方法论问题的影响,并以比较目的进行测试,以强调这些问题。实验结果突出了对称MCT的缺点,并将这些技术排除为可行的选择。相反,被证明是不对称的MCT是一种适当的抗噪声稳健方法,用于构建Reinke空间的渗出性病变的诊断系统,因为用所得分类器获得的性能不远离用于清洁训练的性能。

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