用员工情绪检测来衡量员工生产力的解决方案

T.R.S. De Silva, K.Y. Dayananda, R.C. Galagama Arachchi, M.K.S.B. Amerasekara, S. Silva, N. Gamage
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引用次数: 0

摘要

工人的健康和安全已成为现代企业的头等大事。原因是它会对个人和团队的产出产生影响。在过去的几十年里,使用机器学习的自动面部表情分析已经成为一个有前途和繁华的研究领域。在本研究中,该系统主要评估工人的效率,并通过检测他们的情绪状态来确定他们的动机水平。在第一个组件中,系统测量员工的任务完成率,并预测员工的满意程度。该组件使用随机森林回归来代替线性回归,随机森林回归具有比线性回归更高的精度。员工在工作中的表现将被定期评估,大约每15分钟一次,评估结果将显示在仪表板上。在整个过程的第二阶段,该系统将注意到工作人员的情绪。这些特征将用于评估组织内部的动机水平,最终目标是提高整体生产力。这种情绪检测的准确性也将定期检查,即每15分钟检查一次。该过程的以下部分监视PC的使用并计算生产力水平。如果监控并跟踪每个员工的应用程序使用情况,就有可能提高工作效率。最后一个组件监视员工访问的网站以及他们如何使用网络。这个组件可以更容易地生成基于互联网和网络利用率的报告,以及关于性能的信息和汇总网站流量的报告。当它作为一个集成系统完全运行时,大多数企业将依赖该系统作为其成功的主要驱动力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Solution to Measure Employee Productivity with Employee Emotion Detection
Health and safety of workers has become a top priority in modern businesses. The reason is that it will have an impact on both individual and team output. In the last few decades, automatic facial expression analysis using machine learning has emerged as a promising and bustling field of study. In this study, the system primarily evaluates the efficiency of workers and, through the detection of their emotional states, determines their levels of motivation. The task completion rate of employees is measured by the system in the first component, and the system predicts the level of satisfaction that the employees will have. In place of linear regression, this component makes use of random forest regression, which boasts a higher degree of precision than its counterpart. The performance of workers on their tasks will be evaluated periodically, about once every fifteen minutes, and the results will be shown on a dashboard. The system will pick up on the emotions of the staff members throughout the second phase of the process. These characteristics will be used to assess the level of motivation inside the organization, with the end goal of increasing overall productivity. The accuracy of this emotion detection will also be checked periodically, namely once every fifteen minutes. The following part of the process monitors the use of the PC and calculates the level of productivity. It will be possible to get an increase in productivity if one monitors and keeps track of the application usage of each employee. The final components monitor the websites that employees visit and how they use the network. This component makes it easier to generate reports based on the utilization of the internet and the network, as well as information on performance and reports that summarize website traffic. When it is fully operational as an integrated system, most businesses will rely on this system as their primary driver of success.
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