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Detection of Talking in Respiratory Signals: A Feasibility Study Using Machine Learning and Wearable Textile-Based Sensors

机译:检测呼吸信号中谈话:使用机器学习和可穿戴纺织传感器的可行性研究

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Social isolation and loneliness are major health concerns in young and older people. Traditional approaches to monitor the level of social interaction rely on self-reports. The goal of this study was to investigate if wearable textile-based sensors can be used to accurately detect if the user is talking as a future indicator of social interaction. In a laboratory study, fifteen healthy young participants were asked to talk while performing daily activities such as sitting, standing and walking. It is known that the breathing pattern differs significantly between normal and speech breathing (i.e., talking). We integrated resistive stretch sensors into wearable elastic bands, with a future integration into clothing in mind, to record the expansion and contraction of the chest and abdomen while breathing. We developed an algorithm incorporating machine learning and evaluated its performance in distinguishing between periods of talking and non-talking. In an intra-subject analysis, our algorithm detected talking with an average accuracy of 85%. The highest accuracy of 88% was achieved during sitting and the lowest accuracy of 80.6% during walking. Complete segments of talking were correctly identified with 96% accuracy. From the evaluated machine learning algorithms, the random forest classifier performed best on our dataset. We demonstrate that wearable textile-based sensors in combination with machine learning can be used to detect when the user is talking. In the future, this approach may be used as an indicator of social interaction to prevent social isolation and loneliness.
机译:社会孤立和孤独是年轻人和老年人的重大健康问题。传统方法,监测社会互动水平依赖于自我报告。本研究的目标是调查可穿戴纺织品的传感器是否可以用于准确检测用户是否作为社交互动的未来指标。在实验室研究中,在进行坐落,站立和走路等日常活动时要求十五名健康的年轻参与者进行谈话。众所周知,呼吸模式在正常和语音呼吸之间有显着不同(即,谈话)。我们将电阻拉伸传感器集成到可穿戴弹性带中,以便在呼吸时记录胸部和腹部的膨胀和收缩。我们开发了一种包含机器学习的算法,并在区分谈话和非谈话期间评估其性能。在一个受试者的分析中,我们的算法检测到谈话,平均精度为85%。在步行期间,在坐着和最低精度下实现的最高精度为88%,最低精度为80.6%。完整的谈话细分已正确识别96%的准确性。从评估的机器学习算法中,随机林分类器在我们的数据集上执行最佳。我们证明,可穿戴纺织品的传感器与机器学习结合使用可用于检测用户何时交谈。将来,这种方法可以用作社会互动的指标,以防止社会孤立和孤独。

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