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Unsupervised Feature Learning for Human Activity Recognition Using Smartphone Sensors

机译:使用智能手机传感器进行人类活动识别的无监督特征学习

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Feature representation has a significant impact on human activity recognition. While the common used hand-crafted features rely heavily on the specific domain knowledge and may suffer from non-adaptability to the particular dataset. To alleviate the problems of hand-crafted features, we present a feature extraction framework which exploits different unsupervised feature learning techniques to learning useful feature representation from accelerometer and gyroscope sensor data for human activity recognition. The unsupervised learning techniques we investigate include sparse auto-encoder, denoising auto-encoder and PCA. We evaluate the performance on a public human activity recognition dataset and also compare our method with traditional features and another way of unsupervised feature learning. The results show that the learned features of our framework outperform the other two methods. The sparse auto-encoder achieves better results than other two techniques within our framework.
机译:特征表示对人类活动识别具有重大影响。尽管常用的手工制作功能在很大程度上依赖于特定领域的知识,并且可能会遭受与特定数据集不兼容的困扰。为了缓解手工制作的功能问题,我们提出了一种功能提取框架,该框架利用不同的无监督特征学习技术从加速度计和陀螺仪传感器数据中学习有用的特征表示,以进行人类活动识别。我们研究的无监督学习技术包括稀疏自动编码器,降噪自动编码器和PCA。我们评估公共人类活动识别数据集的性能,还将我们的方法与传统特征和另一种无监督特征学习方式进行比较。结果表明,我们框架的学习功能优于其他两种方法。与我们框架内的其他两种技术相比,稀疏自动编码器可获得更好的结果。

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