Head motion classification using thread-based sensor and machine learning algorithm.

Journal: Scientific reports
Published Date:

Abstract

Human machine interfaces that can track head motion will result in advances in physical rehabilitation, improved augmented reality/virtual reality systems, and aid in the study of human behavior. This paper presents a head position monitoring and classification system using thin flexible strain sensing threads placed on the neck of an individual. A wireless circuit module consisting of impedance readout circuitry and a Bluetooth module records and transmits strain information to a computer. A data processing algorithm for motion recognition provides near real-time quantification of head position. Incoming data is filtered, normalized and divided into data segments. A set of features is extracted from each data segment and employed as input to nine classifiers including Support Vector Machine, Naive Bayes and KNN for position prediction. A testing accuracy of around 92% was achieved for a set of nine head orientations. Results indicate that this human machine interface platform is accurate, flexible, easy to use, and cost effective.

Authors

  • Yiwen Jiang
    Department of Electrical and Computer Engineering, Tufts University, 161 College Ave, Medford, MA, 02155, USA.
  • Aydin Sadeqi
    Department of Electrical and Computer Engineering, Tufts University, 161 College Ave, Medford, MA, 02155, USA.
  • Eric L Miller
    Department of Electrical and Computer Engineering, Tufts University, 161 College Ave, Medford, MA, 02155, USA. Eric.Miller@tufts.edu.
  • Sameer Sonkusale
    Department of Electrical and Computer Engineering, Tufts University, 161 College Ave, Medford, MA, 02155, USA. Sameer.Sonkusale@tufts.edu.