姿态识别中集成机器学习的系统综述

Jurjiu Nicolae-Adrian, Avram Claudiu, Vutan Ana-Maria, Glazer Ciprian
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引用次数: 0

摘要

姿态检测应用于医疗、监控、虚拟环境、室内监控、动画和娱乐的虚拟现实等多种场景。在过去的二十年里,机器学习的概念经历了巨大的进步,从实验室里开始的好奇到商业用途的广泛实用技术。目的综述机器学习算法在医学领域中用于姿态识别的相关文献。材料和方法文章从以下数据库收集:谷歌Scholar, Science Direct, PubMed和Research Gate。没有评估或识别姿势缺陷的文章被排除在外。结果共纳入55篇文献。按照纳入标准,在使用排除标准进行分类后,仍有16篇文章有待分析、呈现和讨论。通过对本研究纳入的文章的分析,可以得出结论,使用机器学习我们可以获得非常好的结果,并且具有很高的准确率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A systematic review of integrated machine learning in posture recognition
Abstract Introduction Posture detection is used in various situations such as medical care, surveillance, virtual environment, indoor monitoring, virtual reality for animations and entertainment. The concept of machine learning has experienced great progress in the last two decades, from a curiosity started in the laboratory to a widespread practical technology for commercial use. Objective The aim of this paper is to review the literature on the use of machine learning algorithms in the medical field for posture recognition. Material and method Articles were collected from the following databases: Google Scholar, Science Direct, PubMed and Research Gate. We included only articles that were written in English, those that were available for download in full text, published after 2010, the year in which the industrialization of the idea of artificial learning began. Articles that did not assess or recognize the posture deficiencies were excluded. Results A total of 55 articles were eligible for the study. Following the inclusion criteria, and after sorting, using the exclusion criteria, a number of 16 articles remained to be analyzed, presented and discussed. Conclusions After the analysis of the articles included in this study, it can be concluded that using machine learning we can obtain very good results with high accuracy for posture recognition.
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