服务器监控系统中LSTM人脸检测预测人类活动

Alexander Nurenie, Y. Heryadi, Lukas, W. Suparta, Yulyani Arifin
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摘要

监控服务器技术是随着新技术的发展而发展起来的,有效的,额外的新功能,人性化,人类处理大数据,不能在短时间内查看和收集数据,并且需要时间来分析,播放视频/图片以确定机器,人,车辆或环境的问题或性能,监控服务器系统现在具有人脸识别,人脸检测,人体检测,运动检测,车牌识别,为了确定LSTM在服务器监控系统上预测人类行为(长短期记忆)人脸检测方面的有效性,作者进行了一项新的研究,该研究采用了从2022年10月18日至2022年11月9日下载的91501个人脸检测数据的日志视图数据。数据将使用Python编程和训练进行处理,以便它可以用于预测人类活动的未来,利用时间序列预测LSTM包括日常活动的数量,最高和最低天数,以及最大和最小天数。从这项研究的结果被发现有助于找到最低的天的人类和天数最多的人类活动,以便业主能够预测的序列数据所提供的服务将是当人类活动是在特定的区域或特定的一天,它也可以找到人类最大或最小数量计算,并比较不同的日期和地点,在未来的研究中,作者将继续对其他与预测相关的数据进行更深入的研究,这些数据与深度学习服务器监控机系统与人、车辆的交互行为有关。
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Predicting Human Activity with LSTM Face Detection on Server Surveillance System
Surveillance server technology was growth with new technology, effective, extra new features, human friendly, and human deals with big amount data, can't view and collect the data in the short time, and took time to analyze, playback video/picture to determine machine, human, vehicle or environment issues or performance, Surveillance Server Systems now which has the ability to face recognition, face detection, human detection, motion detection, license plate recognition, The authors perform this study that still new this research has never been done before to determine the efficacy of the LSTM in predicting human behavior (Long Short Term Memory) Face Detection on Server surveillance system, by taking log view data with a total of 91501 Face detection data downloaded from 10/18/2022~11/9/2022, the data will be processed using Python programming and training so that it can be used to predict the future regarding human activities that vary utilizing time series prediction LSTM include the number of daily activities, the highest and lowest numbers of days, and the maximum and minimum numbers of days. from the results of this study it was found to help to find out the days with the lowest number of humans and the days with the highest number of human activities, so that the owner can predict with sequence of the data the service would be provided when human activity is high in certain area or certain day, it can also can find out the maximum or minimum amount human counting day by day, and compare able some different date and location, the author will continue to do more in-depth research the others data related with prediction with deep learning server surveillance machine system interaction with human, vehicle behavior in the future studies.
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