Human motion data expansion from arbitrary sparse sensors with shallow recurrent decoders.
Megan R EbersMackenzie PittsJ Nathan KutzKatherine M SteelePublished in: bioRxiv : the preprint server for biology (2024)
Advances in deep learning and sparse sensing have emerged as powerful tools for monitoring human motion in natural environments. We develop a deep learning architecture, constructed from a shallow recurrent decoder network, that expands human motion data by mapping a limited (sparse) number of sensors to a comprehensive (dense) configuration, thereby inferring the motion of unmonitored body segments. Even with a single sensor, we reconstruct the comprehensive set of time series measurements, which are important for tracking and informing movement-related health and performance outcomes. Notably, this mapping leverages sensor time histories to inform the transformation from sparse to dense sensor configurations. We apply this mapping architecture to a variety of datasets, including controlled movement tasks, gait pattern exploration, and free-moving environments. Additionally, this mapping can be subject-specific (based on an individual's unique data for deployment at home and in the community) or group-based (where data from a large group are used to learn a general movement model and predict outcomes for unknown subjects). By expanding our datasets to unmeasured or unavailable quantities, this work can impact clinical trials, robotic/device control, and human performance by improving the accuracy and availability of digital biomarker estimates.
Keyphrases
- endothelial cells
- deep learning
- high resolution
- clinical trial
- electronic health record
- induced pluripotent stem cells
- healthcare
- public health
- big data
- type diabetes
- high density
- randomized controlled trial
- machine learning
- minimally invasive
- working memory
- metabolic syndrome
- risk assessment
- climate change
- mass spectrometry
- convolutional neural network
- neural network
- health information
- open label
- rna seq