Sports Center, Xi'an Jiaotong University, Xi'an, Shaanxi 710049, China.
Department of Physical Education, Kyungpook National University, Daegu 41566, Republic of Korea.
J Healthc Eng. 2021 Aug 30;2021:2946044. doi: 10.1155/2021/2946044. eCollection 2021.
Intelligent sports equipment and software have emerged in the field of sports as a result of the advancement of information technology, allowing professional athletes to collect and visually display the movement and physical signs of the human body to aid in the planning of sports strategies. Intuitive data, on the other hand, cannot assist ordinary people who lack professional knowledge in exercising correctly. As a result, in the field of intelligent sports and health, effective use of collected exercise and physical sign data to analyze the user's personal physical condition and generate reasonable exercise suggestions has emerged as a research direction. In humans, the heart sound signal is a biological signal. It can help people detect and monitor heart health problems by analyzing the characteristics of heart sound signals. The goal of this paper is to use heart sound to identify and analyze athletes' training health. It provides a revolutionary health analysis algorithm based on heart rhythm feature extraction and convolutional neural networks, which is based on exercise training. It greatly improves the accuracy of the recognition and prediction of the athlete's training health status.
随着信息技术的进步,智能运动设备和软件在运动领域崭露头角,专业运动员可以收集和直观地显示人体的运动和生理特征,以辅助制定运动策略。然而,直观的数据无法帮助缺乏专业知识的普通人正确锻炼。因此,在智能运动和健康领域,如何有效利用收集到的运动和生理特征数据,分析用户的个人身体状况并生成合理的运动建议,已成为一个研究方向。在人体中,心音信号是一种生物信号。通过分析心音信号的特征,可以帮助人们检测和监测心脏健康问题。本文旨在利用心音识别和分析运动员的训练健康状况。它提供了一种基于心率特征提取和卷积神经网络的革命性健康分析算法,该算法基于运动训练,极大地提高了运动员训练健康状况的识别和预测的准确性。