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Accelerometer-based activity recognition on a mobile phone using cepstral features and quantized gmms

机译:使用倒谱特征和量化的gmms在手机上基于加速度计的活动识别

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The use of cepstral coefficients derived from a filter bank with logarithmically spaced band center frequencies and Gaussian mixture models (GMMs) with quantized parameters (qGMMs) are proposed for accelerometer-based activity recognition of mobile phone users. The use of a filter bank with logarithmically spaced band center frequencies is shown to yield better results than the use of a filter bank with linear spacing between band center frequencies. GMMs and qGMMs are shown to achieve similar recognition accuracies. However, the computation time using qGMMs is shown to be either at the same level or faster when compared to GMMs, depending on model complexity. Using the proposed approach, we achieve an accuracy of 72.6% and 91.3% on two recognition tasks with seven and five activities, respectively.
机译:提出了使用从对数间隔的带中心频率的滤波器组和具有量化参数的高斯混合模型(GMM)(qGMM)导出的倒谱系数,用于基于加速度计的移动电话用户识别。与使用带中心频率之间线性间隔的滤波器组相比,使用带对数间距的带中心频率的滤波器组产生了更好的结果。显示GMM和qGMM可以实现相似的识别精度。但是,根据模型的复杂性,与qMM相比,使用qGMM的计算时间显示为相同水平或更快。使用提出的方法,我们在两项分别具有七个和五个活动的识别任务上实现了72.6%和91.3%的准确性。

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