1. Paddle Stroke Analysis for Kayakers Using Wearable Technologies
- Author
-
Sen Qiu, Huihui Wang, Long Liu, Yun-Cui Zhang, and Zheng-Dong Hao
- Subjects
inertial sensor ,Computer science ,Posture ,ComputingMethodologies_IMAGEPROCESSINGANDCOMPUTERVISION ,02 engineering and technology ,Kinematics ,paddle stroke analysis ,lcsh:Chemical technology ,Biochemistry ,Motion (physics) ,Article ,Analytical Chemistry ,03 medical and health sciences ,Extended Kalman filter ,Motion ,Wearable Electronic Devices ,0302 clinical medicine ,0202 electrical engineering, electronic engineering, information engineering ,medicine ,Paddle ,Humans ,Computer vision ,lcsh:TP1-1185 ,Electrical and Electronic Engineering ,Instrumentation ,Stroke ,Wearable technology ,data fusion ,business.industry ,020208 electrical & electronic engineering ,030229 sport sciences ,medicine.disease ,Sensor fusion ,Atomic and Molecular Physics, and Optics ,Biomechanical Phenomena ,Identification (information) ,Artificial intelligence ,business ,motion reconstruction ,Algorithms ,Sports - Abstract
Proper stroke posture and rhythm are crucial for kayakers to achieve perfect performance and avoid the occurrence of sport injuries. The traditional video-based analysis method has numerous limitations (e.g., site and occlusion). In this study, we propose a systematic approach for evaluating the training performance of kayakers based on the multiple sensors fusion technology. Kayakers&rsquo, motion information is collected by miniature inertial sensor nodes attached on the body. The extend Kalman filter (EKF) method is used for data fusion and updating human posture. After sensor calibration, the kayakers&rsquo, actions are reconstructed by rigid-body model. The quantitative kinematic analysis is carried out based on joint angles. Machine learning algorithms are used for differentiating the stroke cycle into different phases, including entry, pull, exit and recovery. The experiment shows that our method can provide comprehensive motion evaluation information under real on-water scenario, and the phase identification of kayaker&rsquo, s motions is up to 98% validated by videography method. The proposed approach can provide quantitative information for coaches and athletes, which can be used to improve the training effects.
- Published
- 2021