Title:
Developing an LSTM Pipeline for Accelerometer DataDescription:
We explore the architecture space available for the construction of deep LSTM (d-LSTM) recurrent neural network (RNN) models, specifically related to predictive analytics in the domain of human activity recognition (HAR) from accelerometer time series data.
Presenter(s):
Speaker: Christian McDaniel, University of Georgia | |
Speaker: Shannon Quinn, University of Georgia |