Comparison of end-to-end neural network architectures and data
augmentation methods for automatic infant motility assessment using wearable
sensors
- URL: http://arxiv.org/abs/2107.01086v1
- Date: Fri, 2 Jul 2021 14:02:05 GMT
- Title: Comparison of end-to-end neural network architectures and data
augmentation methods for automatic infant motility assessment using wearable
sensors
- Authors: Manu Airaksinen, Sampsa Vanhatalo, Okko R\"as\"anen
- Abstract summary: This study investigates the use of different end-to-end neural network architectures for processing infant motility data from wearable sensors.
The experiments are conducted using a data-set of multi-sensor movement recordings from 7-month-old infants.
- Score: 7.003610369186623
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: 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 modelling
modules and their combinations. In addition, we explore the benefits of data
augmentation methods in ideal and non-ideal recording conditions. The
experiments are conducted using a data-set of multi-sensor 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 2-dimensional convolutions for
intra-sensor 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 feed-forward
dilated convolutions with residual and skip connections outperformed all
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 multi-channel movement sensor data.
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