Motion Capture Sensor-Based Emotion Recognition Using a Bi-Modular Sequential Neural Network

Sensors (Basel). 2022 Jan 5;22(1):403. doi: 10.3390/s22010403.

Abstract

Motion capture sensor-based gait emotion recognition is an emerging sub-domain of human emotion recognition. Its applications span a variety of fields including smart home design, border security, robotics, virtual reality, and gaming. In recent years, several deep learning-based approaches have been successful in solving the Gait Emotion Recognition (GER) problem. However, a vast majority of such methods rely on Deep Neural Networks (DNNs) with a significant number of model parameters, which lead to model overfitting as well as increased inference time. This paper contributes to the domain of knowledge by proposing a new lightweight bi-modular architecture with handcrafted features that is trained using a RMSprop optimizer and stratified data shuffling. The method is highly effective in correctly inferring human emotions from gait, achieving a micro-mean average precision of 0.97 on the Edinburgh Locomotive Mocap Dataset. It outperforms all recent deep-learning methods, while having the lowest inference time of 16.3 milliseconds per gait sample. This research study is beneficial to applications spanning various fields, such as emotionally aware assistive robotics, adaptive therapy and rehabilitation, and surveillance.

Keywords: deep learning; emotion recognition; gait; handcrafted features; human motion; long short-term memory; motion capture sensor; remote visual technology.

MeSH terms

  • Emotions
  • Gait
  • Humans
  • Motion
  • Neural Networks, Computer*
  • Robotics*