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Vocalization removal for improved automatic segmentation of dual-axis swallowing accelerometry signals.

机译:去除语音,改善双轴吞咽加速度计信号的自动分段。

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摘要

Automatic segmentation of dual-axis swallowing accelerometry signals can be severely affected by strong vocalizations. In this paper, a method based on periodicity detection is proposed to detect and remove such vocalizations. Periodic signal components are detected using conventional speech processing techniques and information from both axes are combined to improve vocalization detection accuracy. Experiments with 408 healthy subjects performing dry, wet, and wet chin tuck swallows show that the proposed method attains an average 95.3% sensitivity and 96.3% specificity. When applied in conjunction with an automatic segmentation algorithm, it is observed that segmentation accuracy improves by approximately 55%. These results encourage further development of medical devices for the detection of swallowing difficulties.
机译:强烈的发声会严重影响双轴吞咽加速度计信号的自动分段。在本文中,提出了一种基于周期性检测的方法来检测和消除这种发声。使用常规语音处理技术检测周期信号分量,并组合来自两个轴的信息以提高发声检测精度。对408名健康受试者进行干燥,湿润和下巴下巴吞咽实验表明,该方法平均灵敏度为95.3%,特异性为96.3%。与自动分割算法结合使用时,可以发现分割精度提高了约55%。这些结果鼓励进一步开发用于检测吞咽困难的医疗设备。

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