Abstract
The movement process of the human body is not the movement process of a single limb, but the movement process of skeletal muscles that coordinate multiple adjacent limbs with joints as the hub. Human body movement has different actions and links. When observing the human body movement mechanism, introducing the body movement chain can maintain the integrity and independence of the movement system. The upper limb of the human body is a kinematic chain with multiple limbs and multiple degrees of freedom, which can perform various complex movements. This article mainly introduces the upper limb movement simulation and biomechanical characteristics analysis during human movement, and intends to provide some ideas and directions for the upper limb movement simulation and biomechanical characteristics research during human movement. This paper proposes the research methods of upper limb motion simulation and biomechanical characteristics analysis during human movement, summarizes the human upper limb physiological structure and the relevant theoretical knowledge of human body biomechanics, and proposes the human upper limb motion capture and the human upper limb posture description algorithm for the human body Simulation experiment of upper limb movement during exercise. The experimental results of this paper show that the overall prediction time of simulation using MSCNN is only 0.0065 s, which ensures the real-time prediction.
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Author contributions: The author has accepted responsibility for the entire content of this submitted manuscript and approved submission.
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Research funding: None declared.
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Conflict of interest statement: The author declares no conflicts of interest regarding this article.
References
1. Bharadwaj, R, Swaisaenyakorn, S, Parini, CG, Batchelor, JC, Alomainy, A. Impulse radio ultra-wideband communications for localization and tracking of human body and limbs movement for healthcare applications. IEEE Trans Antenn Propag 2017;65:7298–309. https://doi.org/10.1109/tap.2017.2759841.Suche in Google Scholar
2. Smeragliuolo, AH, Hill, NJ, Disla, L, Putrino, D. Validation of the leap motion controller using markered motion capture technology. J Biomech 2016;49:1742–50. https://doi.org/10.1016/j.jbiomech.2016.04.006.Suche in Google Scholar PubMed
3. Chen, P, Zhang, Z. Energy collection and measurement of power of the movement of the human body. IETE J Res 2018;64:503–13. https://doi.org/10.1080/03772063.2017.1361870.Suche in Google Scholar
4. Pirhonen, A, Tuuri, K, Erkut, C. Human-technology choreographies : body, movement, and space. Hum Technol 2016;12:1–4. https://doi.org/10.17011/ht/urn.201605192617.Suche in Google Scholar
5. Man, W. The application of the human body link stress analysis method in the basketball movement. J Comput Theor Nanosci 2017;14:79–83. https://doi.org/10.1166/jctn.2017.6128.Suche in Google Scholar
6. Gavrilescu, M. Recognizing human gestures in videos by modeling the mutual context of body position and hands movement. Multimed Syst 2017;23:381–93. https://doi.org/10.1007/s00530-016-0504-y.Suche in Google Scholar
7. Zhang, L. Research on human body movement posture based on inertial sensor. Int J Bioautomation 2018;22:179–86. https://doi.org/10.7546/ijba.2018.22.2.179-186.Suche in Google Scholar
8. Martynenko, O, Schmitt, S, Bayer, A, Blaschke, J, Mayer, C. A movement generation algorithm for FE Human Body Models. Proc Appl Math Mech 2017;17:201–2. https://doi.org/10.1002/pamm.201710070.Suche in Google Scholar
9. Pirhonen, A, Tuuri, K, Erkut, C. Human-technology choregraphies: body, movement, and space in expressive interactions. Hum Technol 2017;13:6–9. https://doi.org/10.17011/ht/urn.201705272515.Suche in Google Scholar
10. Deshaw, J, Rahmatalla, S, Oliver, M, Eger, T. Effect of lumbar support on human-head movement and discomfort in whole-body vibration. Occup Ergon 2016;13:3–14. https://doi.org/10.3233/oer-160237.Suche in Google Scholar
11. Xie, L, Zhang, X, Xu, Y, Shang, Y, Yu, Q. SkeletonFusion: reconstruction and tracking of human body in real-time. Opt Laser Eng 2018;110:80–8. https://doi.org/10.1016/j.optlaseng.2018.05.011.Suche in Google Scholar
12. Junjie, L. Review-Research on the physical training model of human body based on HQ. Pak J Pharm Sci 2016;29:2259–68.Suche in Google Scholar
13. Destefano, A, Martin, CF, Wallace, DI. A dynamical model of the transport of asbestos fibres in the human body. J Biol Dynam 2017;11:365–77. https://doi.org/10.1080/17513758.2017.1355489.Suche in Google Scholar PubMed
14. Veltink, HMSPH. Ambulatory estimation of foot movement during gait using inertial sensors. First Dutch conference on bio-medical engineering, egmond aan zee, The Netherlands. J Biomech 2017;43:3138–43.10.1016/j.jbiomech.2010.07.039Suche in Google Scholar
15. Lee, YC. Jukyeom as the source of trace elements to the human body: an analysis using in-san jukyeom. Food Sci Nutr 2016;2:1–7. https://doi.org/10.24966/fsn-1076/100011.Suche in Google Scholar
16. Han, KJ, Kim, JY. The effects of bilateral movement training on upper limb function in chronic stroke patients. J Phys Ther Sci 2016;28:2299–302. https://doi.org/10.1589/jpts.28.2299.Suche in Google Scholar PubMed PubMed Central
17. Mcnulty, PA, Thompson-Butel, AG, Faux, SG, Lin, G, Katrak, PH, Harris, LR, et al.. The efficacy of Wii-based Movement Therapy for upper limb rehabilitation in the chronic poststroke period: a randomized controlled trial. Int J Stroke 2016;10:1253–60. https://doi.org/10.1111/ijs.12594.Suche in Google Scholar PubMed
18. Marinsek, M. Lateral asymmetry as a function of motor practice type of complex upper- and lower-limb movement in young children. Laterality 2016;21:1–15. https://doi.org/10.1080/1357650x.2015.1127253.Suche in Google Scholar PubMed
19. Shuang, Z, Yu-Ping, Q, Jiang-Ming, K, Fu-Chenga, Y, Yi-Hea, L. Measuring upper limb movement to analyze intra-body communication channel attenuation characteristics. Technol Health Care 2018;26:553–8. https://doi.org/10.3233/thc-181208.Suche in Google Scholar PubMed
20. Zhou, X, Zhu, M, Pavlakos, G, Leonardos, S, Derpanis, KG, Daniilidis, K. MonoCap: monocular human motion capture using a CNN coupled with a geometric prior. IEEE Trans Pattern Anal Mach Intell 2019;41:901–14. https://doi.org/10.1109/tpami.2018.2816031.Suche in Google Scholar PubMed
21. Arora, AS. Stress analysis of lower back using EMG signal. Biomed Res 2017;28:519–24.Suche in Google Scholar
22. Barański, R, Grzeczka, A. Problems in estimation of hand grip force based on EMG signal. Diagnostyka 2017;16:21–6.Suche in Google Scholar
23. Karabulut, D, Ortes, F, Arslan, YZ, Adli, MA. Comparative evaluation of EMG signal features for myoelectric controlled human arm prosthetics. Biocybern Biomed Eng 2017;37:326–35. https://doi.org/10.1016/j.bbe.2017.03.001.Suche in Google Scholar
24. Khan, M, Singh, J, Tiwari, M. A multi-classifier approach of EMG signal classification for diagnosis of neuromuscular disorders. Int J Comput Appl 2016;133:13–8. https://doi.org/10.5120/ijca2016907710.Suche in Google Scholar
25. Tapia, C, Omar, D. EMG signal filtering based on independent component analysis and empirical mode decomposition for estimation of motor activation patterns. J Med Biol Eng 2017;37:1–16. https://doi.org/10.1007/s40846-016-0201-5.Suche in Google Scholar
26. Roman-Liu, D. The influence of confounding factors on the relationship between muscle contraction level and MF and MPF values of EMG signal: a review. Int J Occup Saf Ergon 2016;22:77–91. https://doi.org/10.1080/10803548.2015.1116817.Suche in Google Scholar PubMed PubMed Central
27. Wankhade, PS, Rajani, R. A study of various methods for detection and analysis of EMG signal and its application. IOSR J Electron Commun Eng 2019;14:48–54.Suche in Google Scholar
28. Al-Mashhadany, YI. Muscles activity detection from EMG signal of human leg posture afflicted by foot drop disease. J Eng Appl Sci 2019;14:3413–21. https://doi.org/10.36478/jeasci.2019.3413.3421.Suche in Google Scholar
29. Zhao, L, Xie, S, Liu, Y, Liu, Q, Song, X, Li, X. Janus micromotors for motion-capture-lighting of bacteria. Nanoscale 2019;11:17831–40. https://doi.org/10.1039/c9nr05503g.Suche in Google Scholar PubMed
30. Kozina, Z, Chaika, O, Prokopenko, I, Zdanyuk, V, Romantsova, Y. Change in the biomechanical characteristics of running as a result of an individual 1-year program for training an elite athlete with visual impairment for Paralympic Games. Physiother Q 2020;28:21–31. https://doi.org/10.5114/pq.2020.95771.Suche in Google Scholar
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Artikel in diesem Heft
- Frontmatter
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- Automatic monitoring system of power equipment based on Internet of Things technology
- Intelligent algorithm of electrical fire monitoring system based on data mining technology
- Vector correlation learning and pairwise optimization feature selection for false data injection attack detection in smart grid
- ZIP load modeling for single and aggregate loads and CVR factor estimation
- Upper limb movement simulation and biomechanical characteristics during human movement
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Artikel in diesem Heft
- Frontmatter
- Research Articles
- Fault diagnosis of ship power equipment based on adaptive neural network
- Application of sustainable power and laser washing device in garment design
- Automatic monitoring system of power equipment based on Internet of Things technology
- Intelligent algorithm of electrical fire monitoring system based on data mining technology
- Vector correlation learning and pairwise optimization feature selection for false data injection attack detection in smart grid
- ZIP load modeling for single and aggregate loads and CVR factor estimation
- Upper limb movement simulation and biomechanical characteristics during human movement
- Intelligent home control system based on BP neural network speech recognition
- User-side precision marketing model of integrated energy service system
- Building carbon neutrality goals break down strategies for sustainable energy development
- Energy-saving intelligent manufacturing optimization scheme for new energy vehicles