Research Area:  Machine Learning
Autism 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.
Keywords:  
Convolutional neural networks
Long short-term memory
Transfer learning
Ensemble learning
Wearable sensors
Autism spectrum disorders
Author(s) Name:  Nastaran Mohammadian Rad, Seyed Mostafa Kia, Calogero Zarbo
Journal name:  Signal Processing
Conferrence name:  
Publisher name:  Elsevier
DOI:  10.1016/j.sigpro.2017.10.011
Volume Information:  Volume 144
Paper Link:   https://www.sciencedirect.com/science/article/abs/pii/S0165168417303705