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Deep learning for automatic stereotypical motor movement detection using wearable sensors in autism spectrum disorders

机译:使用可穿戴式传感器在自闭症谱系障碍中进行自动识别运动的深度学习

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HighlightsA new application of deep learning in automatic SMM detection on wearable sensors.Feature learning via CNN outperforms handcrafted features in SMM classification.Parameter pre-initialization is useful to transfer knowledge in longitudinal data.Including temporal dynamics of the signal using LSTM improves the detection rate.Using an ensemble of LSTM learners provides more accurate and stable SMM detector.AbstractAutism Spectrum Disorders are associated with atypical movements, of which stereotypical motor movements (SMMs) interfere with learning and social interaction. The automatic SMM detection using inertial measurement units (IMU) remains complex due to the strong intra and inter-subject variability, especially when handcrafted features are extracted from the signal. We propose a new application of the deep learning to facilitate automatic SMM detection using multi-axis IMUs. We use a convolutional neural network (CNN) to learn a discriminative feature space from raw data. We show how the CNN can be used for parameter transfer learning to enhance the detection rate on longitudinal data. We also combine the long short-term memory (LSTM) with CNN to model the temporal patterns in a sequence of multi-axis signals. Further, we employ ensemble learning to combine multiple LSTM learners into a more robust SMM detector. Our results show that: (1) feature learning outperforms handcrafted features; (2) parameter transfer learning is beneficial in longitudinal settings; (3) using LSTM to learn the temporal dynamic of signals enhances the detection rate especially for skewed training data; (4) an ensemble of LSTMs provides more accurate and stable detectors. These findings provide a significant step toward accurate SMM detection in real-time scenarios.
机译: 突出显示 深度学习在可穿戴传感器上自动SMM检测中的新应用。 通过CNN进行的功能学习优于SMM分类中的手工功能。 参数前置初始化对于在纵向数据中传递知识很有用。 使用LSTM包含信号的时间动态特性可以提高检测率。 使用一组LSTM学习器可以提供更准确和稳定的SMM检测器。 摘要 自闭症谱系异常与非典型性相关动作,其中定型运动(SMM)会干扰学习和社交。由于对象之间和对象之间的强烈差异,使用惯性测量单元(IMU)的自动SMM检测仍然很复杂,尤其是从信号中提取手工特征时。我们提出了深度学习的新应用,以促进使用多轴IMU进行自动SMM检测。我们使用卷积神经网络(CNN)从原始数据中学习判别特征空间。我们展示了如何将CNN用于参数传递学习,以提高对纵向数据的检测率。我们还将长期短期记忆(LSTM)与CNN结合在一起,以对多轴信号序列中的时间模式进行建模。此外,我们采用集成学习将多个LSTM学习器组合成一个更强大的SMM检测器。我们的结果表明:(1)特征学习优于手工特征; (2)参数传递学习在纵向设置中是有益的; (3)使用LSTM来学习信号的时间动态性,尤其对于偏斜的训练数据,提高了检测率; (4)一组LSTM提供了更准确和稳定的检测器。这些发现为实现实时场景中的SMM检测提供了重要的一步。

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