BABA Center, Pediatric Research Center, Children's Hospital, Helsinki University Hospital and University of Helsinki, 00290 Helsinki, Finland.
Unit of Computing Sciences, Tampere University, 33720 Tampere, Finland.
Sensors (Basel). 2023 Apr 6;23(7):3773. doi: 10.3390/s23073773.
Infant motility assessment using intelligent wearables is a promising new approach for assessment of infant neurophysiological development, and where efficient signal analysis plays a central role. This study investigates the use of different end-to-end neural network architectures for processing infant motility data from wearable sensors. We focus on the performance and computational burden of alternative sensor encoder and time series modeling modules and their combinations. In addition, we explore the benefits of data augmentation methods in ideal and nonideal recording conditions. The experiments are conducted using a dataset of multisensor movement recordings from 7-month-old infants, as captured by a recently proposed smart jumpsuit for infant motility assessment. Our results indicate that the choice of the encoder module has a major impact on classifier performance. For sensor encoders, the best performance was obtained with parallel two-dimensional convolutions for intrasensor channel fusion with shared weights for all sensors. The results also indicate that a relatively compact feature representation is obtainable for within-sensor feature extraction without a drastic loss to classifier performance. Comparison of time series models revealed that feedforward dilated convolutions with residual and skip connections outperformed all recurrent neural network (RNN)-based models in performance, training time, and training stability. The experiments also indicate that data augmentation improves model robustness in simulated packet loss or sensor dropout scenarios. In particular, signal- and sensor-dropout-based augmentation strategies provided considerable boosts to performance without negatively affecting the baseline performance. Overall, the results provide tangible suggestions on how to optimize end-to-end neural network training for multichannel movement sensor data.
使用智能可穿戴设备评估婴儿运动是评估婴儿神经生理发育的一种很有前途的新方法,而高效的信号分析在此过程中起着核心作用。本研究探讨了使用不同的端到端神经网络架构来处理来自可穿戴传感器的婴儿运动数据。我们专注于替代传感器编码器和时间序列建模模块及其组合的性能和计算负担。此外,我们还探索了在理想和非理想记录条件下数据增强方法的好处。该实验使用了最近提出的用于婴儿运动评估的智能连衣裤捕捉的 7 个月大婴儿多传感器运动记录数据集进行。我们的结果表明,编码器模块的选择对分类器性能有重大影响。对于传感器编码器,最好的性能是通过并行二维卷积获得的,用于所有传感器共享权重的内部传感器通道融合。结果还表明,可以在不严重影响分类器性能的情况下,为内部传感器特征提取获得相对紧凑的特征表示。时间序列模型的比较表明,具有残差和跳过连接的前馈扩张卷积在性能、训练时间和训练稳定性方面均优于所有基于递归神经网络 (RNN) 的模型。实验还表明,数据增强可提高模型在模拟数据包丢失或传感器丢包情况下的鲁棒性。特别是,基于信号和传感器丢包的增强策略在不影响基线性能的情况下显著提高了性能。总的来说,这些结果为如何优化多通道运动传感器数据的端到端神经网络训练提供了具体建议。