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Estimation of noise suppression parameters for maximizing snoring activity detection performance

机译:估计噪声抑制参数以最大化打活动检测性能

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The optimal parameters of noise suppression for detection of snoring activity are analyzed and we improve performance of detection of snoring activity in this paper. For detection of snoring activity, we use a Support Vector Machine which is one of machine learning. By training of grand truth and features, the SVM model is obtained. By applying test date to the SVM model, it is classified into snoring or non-snoring class. Using a mobile device, sleeping sound is recorded. The features for machine learning are computed from sleeping sound. To improve the detection performance, noise suppression is performed before features extraction. We examine the relation between the noise suppression parameters and the performance of detection of snoring activity. We investigate the optimal parameters of noise suppression for detection of snoring activity.
机译:分析了用于打活动检测的最佳噪声抑制参数,并提高了打activity活动检测的性能。为了检测打活动,我们使用了一种支持向量机,它是机器学习中的一种。通过训练主要事实和特征,获得了SVM模型。通过将测试日期应用于SVM模型,可将其分为打class或非打class类别。使用移动设备记录睡眠声音。机器学习的功能是从沉睡的声音中计算出来的。为了提高检测性能,在特征提取之前执行噪声抑制。我们研究了噪声抑制参数与打activity活动检测性能之间的关系。我们研究了抑制打活动的最佳噪声抑制参数。

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