Carlos Vicente Niño Rondón, Sergio Alexander Castro Casadiego, Byron Medina Delgado
{"title":"Background subtraction and yolo algorithm","authors":"Carlos Vicente Niño Rondón, Sergio Alexander Castro Casadiego, Byron Medina Delgado","doi":"10.16925/2357-6014.2021.01.06","DOIUrl":null,"url":null,"abstract":"Introduction: This article is the result of research entitled “Signal processing system for the detection of people in agglomerations in areas of public space in the city of Cúcuta”, developed at the Universidad Francisco de Paula Santander in 2020.Problem: The high percentage of false positives and false negatives in people detection processes makes decision making in video surveillance, tracking and tracing applications complex. Objective: To determine which technique for the detection of people presents better results in terms of respon-se time and detection hits.Methodology: Two techniques for the detection of people in uncontrolled environments are validated in Python with videos taken inside the Universidad Francisco de Paula Santander: Background subtraction and the YOLO algorithm.Results: With the background subtraction technique, we obtained a hit rate of 84.07 % and an average response time of 0.815 seconds. Likewise, with the YOLO algorithm the hit rate and average response time are 90% and 4.59 seconds respectively.Conclusion: It is possible to infer the use of the background subtraction technique in hardware tools such as the Pi 3B+ Raspberry board for processes in which the analysis of information in real time is prioritized, while the YOLO algorithm presents the characteristics required in the processes in which the information is analyzed after the acquisition of the image.Originality: Through this research, aspects required for the real-time analysis of information obtained in pro-cesses of people detection in uncontrolled environments were analyzed. Limitations: The analyzed videos were taken only at the Universidad Francisco de Paula Santander. Also, the Raspberry Pi 3B+ board overheats when processing the video images, due to the full resource requirement of the device.","PeriodicalId":41023,"journal":{"name":"Ingenieria Solidaria","volume":" ","pages":""},"PeriodicalIF":0.4000,"publicationDate":"2021-01-12","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":null,"platform":"Semanticscholar","paperid":null,"PeriodicalName":"Ingenieria Solidaria","FirstCategoryId":"1085","ListUrlMain":"https://doi.org/10.16925/2357-6014.2021.01.06","RegionNum":0,"RegionCategory":null,"ArticlePicture":[],"TitleCN":null,"AbstractTextCN":null,"PMCID":null,"EPubDate":"","PubModel":"","JCR":"Q4","JCRName":"ENGINEERING, MULTIDISCIPLINARY","Score":null,"Total":0}
引用次数: 0
Abstract
Introduction: This article is the result of research entitled “Signal processing system for the detection of people in agglomerations in areas of public space in the city of Cúcuta”, developed at the Universidad Francisco de Paula Santander in 2020.Problem: The high percentage of false positives and false negatives in people detection processes makes decision making in video surveillance, tracking and tracing applications complex. Objective: To determine which technique for the detection of people presents better results in terms of respon-se time and detection hits.Methodology: Two techniques for the detection of people in uncontrolled environments are validated in Python with videos taken inside the Universidad Francisco de Paula Santander: Background subtraction and the YOLO algorithm.Results: With the background subtraction technique, we obtained a hit rate of 84.07 % and an average response time of 0.815 seconds. Likewise, with the YOLO algorithm the hit rate and average response time are 90% and 4.59 seconds respectively.Conclusion: It is possible to infer the use of the background subtraction technique in hardware tools such as the Pi 3B+ Raspberry board for processes in which the analysis of information in real time is prioritized, while the YOLO algorithm presents the characteristics required in the processes in which the information is analyzed after the acquisition of the image.Originality: Through this research, aspects required for the real-time analysis of information obtained in pro-cesses of people detection in uncontrolled environments were analyzed. Limitations: The analyzed videos were taken only at the Universidad Francisco de Paula Santander. Also, the Raspberry Pi 3B+ board overheats when processing the video images, due to the full resource requirement of the device.
简介:这篇文章是2020年由弗朗西斯科·德保拉·桑坦德大学开发的题为“库库塔市公共空间聚集区人群检测信号处理系统”的研究成果,跟踪和跟踪应用程序复杂。目的:确定哪种检测技术在响应时间和检测命中率方面表现出更好的结果。方法:在Python中验证了在不受控制的环境中检测人的两种技术,这两种技术是在弗朗西斯科·德·保拉·桑坦德大学内部拍摄的视频:背景减法和YOLO算法。结果:使用背景减法技术,我们获得了84.07%的命中率和0.815秒的平均响应时间。同样,使用YOLO算法,命中率和平均响应时间分别为90%和4.59秒。结论:对于优先考虑实时信息分析的过程,可以推断在Pi 3B+树莓板等硬件工具中使用背景减法技术,而YOLO算法则呈现了图像采集后信息分析过程中所需的特征。独创性:通过这项研究,分析了在不受控制的环境中对人员检测过程中获得的信息进行实时分析所需的方面。局限性:分析的视频仅在旧金山圣保拉桑坦德大学拍摄。此外,由于设备的全部资源要求,Raspberry Pi 3B+板在处理视频图像时会过热。