Abstract

Currently, with the satisfaction of people’s material life, sports, like yoga and tai chi, have become essential activities in people’s daily life. For most yoga amateurs, they could only learn yoga by self-study, like mechanically imitating from yoga video. They could not know whether they performed standardly without feedback and guidance. In this paper, we proposed a full-body posture modeling and quantitative evaluation method to recognize and evaluate yoga postures to provide guidance to the learner. Back propagation artificial neural network (BP-ANN) was adopted as the first classifier to divide yoga postures into different categories, and fuzzy C-means (FCM) was utilized as the second classifier to classify the postures in a category. The posture data on each body part was regarded as a multidimensional Gaussian variable to build a Bayesian network. The conditional probability of the Gaussian variable corresponding to each body part relative to the Gaussian variable corresponding to the connected body part was used as criterion to quantitatively evaluate the standard degree of body parts. The angular differences between nonstandard parts and the standard model could be calculated to provide guidance with an easily-accepted language, such as “lift up your left arm”, “straighten your right forearm”. To evaluate our method, a wearable device with 11 inertial measurement units (IMUs) fixed onto the body was designed to measure yoga posture data with quaternion format, and the posture database with a total of 211,643 data frames and 1831 posture instances was collected from 11 subjects. Both the posture recognition test and evaluation test were conducted. In the recognition test, 30% data was randomly picked from the database to train BP-ANN and FCM classifiers, and the recognition accuracy of the remaining 70% data was 95.39%, which is highly competitive with previous posture recognition approaches. In the evaluation test, 30% data were picked randomly from subject three, subject four, and subject six, to train the Bayesian network. The probabilities of nonstandard parts were almost all smaller than 0.3, while the probabilities of standard parts were almost all greater than 0.5, and thus the nonstandard parts of body posture could be effectively separated and picked for guidance. We also tested separately the trainers’ yoga posture performance in the condition of without and with guidance provided by our proposed method. The results showed that with guidance, the joint angle errors significantly decreased.

Highlights

  • With the satisfaction of people’s material life, people are pursuing spiritual level and focusing on body health, and as a result, sports, like yoga and tai chi, have become essential activities in Sensors 2019, 19, 5129; doi:10.3390/s19235129 www.mdpi.com/journal/sensorsSensors 2019, 19, 5129 people’s daily life

  • 30% data was randomly picked from the database to train Back propagation artificial neural network (BP-ANN) and fuzzy C-means (FCM) classifiers, and the recognition accuracy of the remaining 70% data was

  • Back propagation artificial neural network (BP-ANN) was adopted as the first classifier to divide yoga postures into different categories, and fuzzy C-means (FCM) was utilized as the second classifier to classify the postures in a category

Read more

Summary

Introduction

With the satisfaction of people’s material life, people are pursuing spiritual level and focusing on body health, and as a result, sports, like yoga and tai chi, have become essential activities in Sensors 2019, 19, 5129; doi:10.3390/s19235129 www.mdpi.com/journal/sensors. Yoga posture recognition and evaluation are significant for guidance to self-study. Jae-Wan et al [19] applied SVM to recognize human daily behaviors with body image sequences, and good recognition results have been achieved. Hachaj et al [24] proposed a posture description language (GDL) to redefine human postures and evaluate full body movements. These evaluation methods could pick the nonstandard body parts. A wearable device was designed with 11 IMUs fixed on body to measure human posture data with quaternion format.

System Introduction
Wearable Device
Posture and Subjects
Posture Modeling
Posture Recognition
Posture Evaluation
B11 B12 where
Posture Recognition Results
Posture Evaluation Results
Posture Recognition Robustness Evaluation
The Comparison of Posture Membership and Evaluation Probability
Comparison between the Proposed Method and Other Methods in the Literature
Conclusions
Full Text
Paper version not known

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call

Disclaimer: All third-party content on this website/platform is and will remain the property of their respective owners and is provided on "as is" basis without any warranties, express or implied. Use of third-party content does not indicate any affiliation, sponsorship with or endorsement by them. Any references to third-party content is to identify the corresponding services and shall be considered fair use under The CopyrightLaw.