基于新型深度学习技术的安全进站疲劳水平评估

Rahul Kushwah, Rajiv Muradia, A. Bist
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引用次数: 0

摘要

疲劳是在工作场所筛选“适合工作”的重要组成部分。本研究论文的主要目的是确定一种新的深度学习技术,可用于在工作场所环境中筛选疲劳。为了实现个人和职业目标,加强组织结构,并以适当的方式维持个人的生活条件,必须考虑到雇员的健康和安全问题。这份研究报告概述了我们的工作,即在开始工作之前,用最先进的技术检测工作场所的健康、安全和疲劳的重要性。为了提高检测精度,本文提出了一种基于不同面部标志的实时综合员工疲劳检测算法,该算法在不配备传感器设备的情况下,利用面部视频序列检测员工的疲劳状态。对面部区域进行分析,包括检测左右眼和嘴巴区域。在本文中,我们提出了一种新的深度学习技术来对高、中、低水平的疲劳进行分类。我们在一个安全入口站(SES)进行这项活动,该站点还测量其他重要参数,如体温、眼红度、心率和呼吸率。目前研究的重点是疲劳检测,我们的人工智能管道在识别疲劳水平的各个地点收集的数据点上达到了91%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。
EVALUATION OF FATIGUE LEVEL BY SAFE ENTRY STATION USING NOVEL DEEP LEARNING TECHNIQUE
Fatigue is an important component for screening for “Fit for Duty” at work place. The main objective of this research paper is to identify a novel deep learning technique that can be used to screen fatigue in workplace setting. In order to achieve personal and professional goals, enhance the structure of the organization and to sustain one’s living conditions in an appropriate manner, it is necessary to take into consideration the aspects of health and safety of the employees. This research paper outlines our work on the importance of detecting health, safety and fatigue in the workplace with state-of-art technology before even starting a job. This paper proposes a real-time comprehensive employee fatigue detection algorithm based on different facial landmarks to improve the detection accuracy, which detects the employee’s fatigue status by using facial video sequences without equipping them with sensor devices. The facial area is analyzed including detection of left and right eye along with the mouth region. In this paper we are proposing a novel deep learning technique to classify high, mid and low levels of fatigue. We are performing this activity at a safe entry station (SES) which also measures other vital parameters such as Body Temperature, Eye Redness, Heart Rate and Respiration Rate. The focus of the current study is on fatigue detection and our AI pipeline achieved 91% accuracy on data points collected at various sites in identification of fatigue levels.
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