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Real-life Human Activity Recognition with Tri-axial Accelerometer Data from Smartphone using Hybrid Long Short-Term Memory Networks

机译:使用混合长短期内存网络,使用来自智能手机的三轴加速度计数据的现实人类活动识别

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Human activity recognition (HAR) has an enthusiastic research field in time-series classification due to its variation of successful applications in various domains. The availability of affordable wearable devices have provided many challenging and interesting research HAR problems. Current researches suggest that deep learning approaches are suited to automated feature extraction from raw sensor data, instead of conventional machine learning approaches that reply on handcrafted features. Based on the recent success of Long Short-Term Memory (LSTM) networks for HAR domains, this work proposes a generic framework for accelerometer data based on LSTM networks for real-life HAR. Four hybrid LSTM networks have been comparatively studied on a public available real-life HAR dataset. Moreover, we take advantage of Bayesian optimization techniques for tuning hyperparameter of each LSTM networks. The experimental results indicate that the CNN-LSTM network surpasses other hybrid LSTM networks.
机译:由于各个领域的成功应用程序变化,人类活动识别(Har)在时间序列分类中具有热情的研究领域。经济实惠的可穿戴设备的可用性提供了许多具有挑战性和有趣的研究哈尔问题。目前的研究表明,深度学习方法适用于原始传感器数据的自动特征提取,而不是在手工特征上回复的传统机器学习方法。基于最近的HAR域的长期内存(LSTM)网络的成功,这项工作提出了一种基于基于LSTM网络的加速度计数据的通用框架。在公共可用现实生活中,四个混合LSTM网络已经相对较好地研究。此外,我们利用贝叶斯优化技术来调整每个LSTM网络的超参数。实验结果表明,CNN-LSTM网络超出了其他混合LSTM网络。

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