Sensor Data Acquisition and Multimodal Sensor Fusion for Human Activity Recognition Using Deep Learning

Sensors (Basel). 2019 Apr 10;19(7):1716. doi: 10.3390/s19071716.

Abstract

In this paper, we perform a systematic study about the on-body sensor positioning and data acquisition details for Human Activity Recognition (HAR) systems. We build a testbed that consists of eight body-worn Inertial Measurement Units (IMU) sensors and an Android mobile device for activity data collection. We develop a Long Short-Term Memory (LSTM) network framework to support training of a deep learning model on human activity data, which is acquired in both real-world and controlled environments. From the experiment results, we identify that activity data with sampling rate as low as 10 Hz from four sensors at both sides of wrists, right ankle, and waist is sufficient in recognizing Activities of Daily Living (ADLs) including eating and driving activity. We adopt a two-level ensemble model to combine class-probabilities of multiple sensor modalities, and demonstrate that a classifier-level sensor fusion technique can improve the classification performance. By analyzing the accuracy of each sensor on different types of activity, we elaborate custom weights for multimodal sensor fusion that reflect the characteristic of individual activities.

Keywords: Long Short-Term Memory network; classifier-level ensemble; deep learning; human activity recognition; mobile sensing; multimodal sensor fusion; sensor position.

MeSH terms

  • Activities of Daily Living
  • Algorithms
  • Automobile Driving
  • Biosensing Techniques*
  • Deep Learning
  • Human Activities*
  • Humans
  • Monitoring, Physiologic / instrumentation*
  • Multimodal Imaging / methods
  • Standing Position
  • Walking / physiology
  • Wearable Electronic Devices*