Computer-Assisted Quantitative Analysis of Skeletal Muscles of Snowboarding Parallel Giant Slalom Athletes after Exercise Based on Artificial Intelligence and Complex Networks

The snowboarding project has the characteristics of high risk and high technical level. The current publicity level is not high, and the number of participants is also very limited. Another potential advantage medal breakthrough project that is expected to be achieved in the Winter Olympics has rece...

Full description

Saved in:
Bibliographic Details
Main Authors: Haiqiang Yu, Fei Yang, Jin Wang
Format: Article
Language:English
Published: Wiley 2022-01-01
Series:Applied Bionics and Biomechanics
Online Access:http://dx.doi.org/10.1155/2022/9755658
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1832562551330701312
author Haiqiang Yu
Fei Yang
Jin Wang
author_facet Haiqiang Yu
Fei Yang
Jin Wang
author_sort Haiqiang Yu
collection DOAJ
description The snowboarding project has the characteristics of high risk and high technical level. The current publicity level is not high, and the number of participants is also very limited. Another potential advantage medal breakthrough project that is expected to be achieved in the Winter Olympics has received a lot of attention, creating favorable opportunities for the promotion and development of this project in China. The event requires good special physical support, skeletal muscle contraction is the body to produce motor function, and special physical training and recovery are key factors for athletes to obtain excellent results in the competition. This article is aimed at performing ultrasonic quantitative analysis on the skeletal muscles of skiers after exercise based on artificial intelligence and complex networks and at studying the skeletal muscle conditions of snowboarders after exercise, so as to provide a certain theoretical basis for coaches in future scientific training. Based on a large amount of literature, this paper uses variational optical flow calculation and split Bregman method to solve the typical HS model, L1-L2 model, and L1-high-order model, respectively, and uses the motion estimation method to describe the movement of muscles. An experiment was designed to collect ultrasound images of the gastrocnemius and quadriceps muscles during contraction. In addition, a motion target positioning algorithm was used to obtain some motion parameters, which provided direct help for athletes in rationally arranging training load and scientific training. The experimental results in this paper show that the muscle motion features extracted from the ultrasound sequence images can quantitatively express a lot of important information about the skeletal muscle motion form and function and have potential practical application value. And the different invariants of each type of ski trajectory vary greatly, floating between 1.5429 and 7.6759.
format Article
id doaj-art-a5b3e089d7694d199baf5b66fab828fa
institution Kabale University
issn 1754-2103
language English
publishDate 2022-01-01
publisher Wiley
record_format Article
series Applied Bionics and Biomechanics
spelling doaj-art-a5b3e089d7694d199baf5b66fab828fa2025-02-03T01:22:25ZengWileyApplied Bionics and Biomechanics1754-21032022-01-01202210.1155/2022/9755658Computer-Assisted Quantitative Analysis of Skeletal Muscles of Snowboarding Parallel Giant Slalom Athletes after Exercise Based on Artificial Intelligence and Complex NetworksHaiqiang Yu0Fei Yang1Jin Wang2School of Physical EducationDepartment of Physical Education and ResearchSchool of Physical EducationThe snowboarding project has the characteristics of high risk and high technical level. The current publicity level is not high, and the number of participants is also very limited. Another potential advantage medal breakthrough project that is expected to be achieved in the Winter Olympics has received a lot of attention, creating favorable opportunities for the promotion and development of this project in China. The event requires good special physical support, skeletal muscle contraction is the body to produce motor function, and special physical training and recovery are key factors for athletes to obtain excellent results in the competition. This article is aimed at performing ultrasonic quantitative analysis on the skeletal muscles of skiers after exercise based on artificial intelligence and complex networks and at studying the skeletal muscle conditions of snowboarders after exercise, so as to provide a certain theoretical basis for coaches in future scientific training. Based on a large amount of literature, this paper uses variational optical flow calculation and split Bregman method to solve the typical HS model, L1-L2 model, and L1-high-order model, respectively, and uses the motion estimation method to describe the movement of muscles. An experiment was designed to collect ultrasound images of the gastrocnemius and quadriceps muscles during contraction. In addition, a motion target positioning algorithm was used to obtain some motion parameters, which provided direct help for athletes in rationally arranging training load and scientific training. The experimental results in this paper show that the muscle motion features extracted from the ultrasound sequence images can quantitatively express a lot of important information about the skeletal muscle motion form and function and have potential practical application value. And the different invariants of each type of ski trajectory vary greatly, floating between 1.5429 and 7.6759.http://dx.doi.org/10.1155/2022/9755658
spellingShingle Haiqiang Yu
Fei Yang
Jin Wang
Computer-Assisted Quantitative Analysis of Skeletal Muscles of Snowboarding Parallel Giant Slalom Athletes after Exercise Based on Artificial Intelligence and Complex Networks
Applied Bionics and Biomechanics
title Computer-Assisted Quantitative Analysis of Skeletal Muscles of Snowboarding Parallel Giant Slalom Athletes after Exercise Based on Artificial Intelligence and Complex Networks
title_full Computer-Assisted Quantitative Analysis of Skeletal Muscles of Snowboarding Parallel Giant Slalom Athletes after Exercise Based on Artificial Intelligence and Complex Networks
title_fullStr Computer-Assisted Quantitative Analysis of Skeletal Muscles of Snowboarding Parallel Giant Slalom Athletes after Exercise Based on Artificial Intelligence and Complex Networks
title_full_unstemmed Computer-Assisted Quantitative Analysis of Skeletal Muscles of Snowboarding Parallel Giant Slalom Athletes after Exercise Based on Artificial Intelligence and Complex Networks
title_short Computer-Assisted Quantitative Analysis of Skeletal Muscles of Snowboarding Parallel Giant Slalom Athletes after Exercise Based on Artificial Intelligence and Complex Networks
title_sort computer assisted quantitative analysis of skeletal muscles of snowboarding parallel giant slalom athletes after exercise based on artificial intelligence and complex networks
url http://dx.doi.org/10.1155/2022/9755658
work_keys_str_mv AT haiqiangyu computerassistedquantitativeanalysisofskeletalmusclesofsnowboardingparallelgiantslalomathletesafterexercisebasedonartificialintelligenceandcomplexnetworks
AT feiyang computerassistedquantitativeanalysisofskeletalmusclesofsnowboardingparallelgiantslalomathletesafterexercisebasedonartificialintelligenceandcomplexnetworks
AT jinwang computerassistedquantitativeanalysisofskeletalmusclesofsnowboardingparallelgiantslalomathletesafterexercisebasedonartificialintelligenceandcomplexnetworks