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An Improved Data Representation for Smoking Detection with Wearable Respiration Sensors

机译:具有可穿戴呼吸传感器的吸烟检测的改进数据表示

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This paper proposes a peak-based representation for smoking detection from RIP data as a more robust alternative to the existing segmentation-based representation. The rational for preferring this approach in the presence of noise is that there is much less uncertainty about the location of the peaks in the RIP data than there is about the location of segmentation boundaries. To implement this approach, we first run a peak detection algorithm on the RIP waveform data to extract the peaks (maximum inhalation) and valleys (maximum exhalation) from the input time series. We then extract feature vectors analogous to those used in the segmentation case [1], but defined using relative locations and amplitudes of peaks and valleys. We associate puff (positive) and non-puff (negative) labels with peaks, and learn a classification model to predict the peak labels given the associated feature vectors.
机译:本文提出了一种基于峰值的表示,用于从RIP数据吸烟检测,作为对现有的基于分段的表示的更强大的替代品。在噪声存在下偏好这种方法的理性是曲折数据中峰值的位置的不确定性远远较小,而不是关于分割边界的位置。为了实现这种方法,我们首先在RIP波形数据上运行峰值检测算法,以从输入时间序列中提取峰值(最大吸入)和谷(最大呼气)。然后,我们提取类似于分段情况[1]中使用的特征向量[1],但是使用峰和谷的相对位置和幅度定义。我们将PUFF(正)和非泡芙(负)标签与峰值相关联,并学习分类模型以预测给出相关的特征向量的峰值标签。

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