Interaction Detection with Depth Sensing and Body Tracking Cameras in Physical Rehabilitation.

@article{Omelina2016InteractionDW,
  title={Interaction Detection with Depth Sensing and Body Tracking Cameras in Physical Rehabilitation.},
  author={L. Omelina and B. Jansen and B. Bonnech{\`e}re and M. Oravec and P. Jarmila and S. Van Sint Jan},
  journal={Methods of information in medicine},
  year={2016},
  volume={55 1},
  pages={
          70-8
        }
}
  • L. Omelina, B. Jansen, +3 authors S. Van Sint Jan
  • Published 2016
  • Computer Science, Medicine
  • Methods of information in medicine
  • INTRODUCTION This article is part of the Focus Theme of Methods of Information in Medicine on "Methodologies, Models and Algorithms for Patients Rehabilitation". OBJECTIVES This paper presents a camera based method for identifying the patient and detecting interactions between the patient and the therapist during therapy. Detecting interactions helps to discriminate between active and passive motion of the patient as well as to estimate the accuracy of the skeletal data. METHODS Continuous… CONTINUE READING
    8 Citations

    Figures, Tables, and Topics from this paper

    Kinect-Based Physiotherapy and Assessment: A Comprehensive Review
    • 3
    Methodologies, Models and Algorithms for Patients Rehabilitation.
    • 1
    • PDF
    Winning Compensations: Adaptable Gaming Approach of Rehabilitation Sessions based on Compensatory Movements
    • Henrique Raposo de Carvalho
    • 2019
    • PDF

    References

    SHOWING 1-10 OF 17 REFERENCES
    Two-person interaction detection using body-pose features and multiple instance learning
    • 305
    • PDF
    Towards pervasive physical rehabilitation using Microsoft Kinect
    • Chien-Yen Chang, B. Lange, +5 authors A. Rizzo
    • Computer Science
    • 2012 6th International Conference on Pervasive Computing Technologies for Healthcare (PervasiveHealth) and Workshops
    • 2012
    • 269
    • PDF
    A survey on vision-based human action recognition
    • R. Poppe
    • Computer Science
    • Image Vis. Comput.
    • 2010
    • 1,929
    • PDF
    Face Recognition with Local Binary Patterns
    • 909
    Deep Learning Identity-Preserving Face Space
    • 261
    • PDF
    Face recognition methods for multimodal interface
    • 5
    Patient follow-up using Serious Games. A feasibility study on low back pain patients
    • 11