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Static postural transition-based technique and efficient feature extraction for sensor-based activity recognition

机译:基于静态过渡的技术与基于传感器的活动识别的高效特征提取

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Smartphone sensor-based activity recognition seeks broad, high-level knowledge about human behaviors from multitudes of low-level sensor readings, and makes considerable headway in healthcare domain. Our primary contribution is to study the effective pre-processing technique and the extraction of robust features for the classification of sensor data for human activity recognition (HAR). In the pre-processing stages, we investigated multiple filtering parameters for reducing waveform delay, smartphone orientation constraint by introducing magnitude and jerk-based features, and optimum window length for analyzing the trade-off between model performance and latency. Besides, we proposed a feature named & ldquo;Average Height & rdquo; that summarizes the average peak to trough distance of the activity and encodes any change of motion for classification. We also proposed two feature selection techniques for offline and real-time faster activity recognition, and analyzed the impact of different feature sets on classifying different activities. Moreover, after performing the classification with optimized hyperparameters, we proposed a Static Postural Transition-based Post-Processing (SPTPP) technique. This post-processing approach analyzes the existence of postural transition from previous window activity to current window activity, and helps to improve the model output by analyzing the posture change. The impact of our proposed techniques are demonstrated on three benchmark datasets named HASC, HAR, and HAPT, where we obtained the state-of-the-art results. We used HASC dataset for optimizing model parameters in different stages, and explored HAR and HAPT datasets as test-beds to verify our optimizations and postprocessing technique.(c) 2021 Elsevier B.V. All rights reserved.
机译:智能手机传感器的活动识别寻求广泛,高级别的关于人类行为的知识,从多级别的低级传感器读数中进行了相当大的前往医疗领域。我们的主要贡献是研究有效的预处理技术和鲁棒特征的提取,用于人类活动识别(HAR)的传感器数据的分类。在预处理阶段,通过引入基于幅度和混蛋的特征和最佳窗口长度来研究多个过滤参数,以降低波形延迟,智能手机方向约束,以及用于分析模型性能和延迟之间的权衡的折衷。此外,我们提出了一个名为&ldquo的特征;平均身高和rdquo;总结了活动的平均峰值到活动的距离,并编码任何动作的变化进行分类。我们还提出了两个特征选择技术,用于离线和实时更快的活动识别,并分析了不同特征集对分类不同活动的影响。此外,在用优化的超参数进行分类后,我们提出了一种基于静态的姿势转换后处理(SPTPP)技术。该后处理方法分析了从先前窗口活动到当前窗口活动的姿势过渡的存在,并通过分析姿势变化有助于改善模型输出。我们所提出的技术对三个基准数据集的影响,名为HASC,HAR和HAPT,在那里我们获得了最先进的结果。我们使用了HASC数据集以优化不同阶段的模型参数,并探索了HAR和HAPT数据集​​作为测试床,以验证我们的优化和后处理技术。(c)2021 Elsevier B.V.保留所有权利。

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