An Application of a Deep Learning Algorithm for Detection of Accidents under bad CCTV Monitoring Conditions in Tunnels using ODTS &R-CNN

D. V. Kumar, L. Y. Reddy, Y. Vinnie, N. Tejaswini, A. Raju
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Abstract

In this project, an Object Detection and Tracking System (ODTS) can be brought and used together with a famous deep gaining knowledge of community, the Faster Regional Convolution Neural Network (Faster R-CNN), for Object Detection and a Conventional Object Tracking set of rules for computerized detection and tracking of surprising occasions on CCTVs in tunnels, which can be probable to be (1) Wrong-Way Driving (WWD), (2) Stop, (three) Person out of the automobile in ODTS takes a video body in time as enter and makes use of Object Detection to generate Bounding Box (BBox) findings, evaluating the BBoxes of the modern and former video frames to assign a completely unique ID wide variety to every shifting and diagnosed item. This technique lets in you to display a shifting item in real-time, that's hard to do with conventional item detection frameworks. With a group of occasion pix in tunnels, a deep gaining knowledge of version in ODTS changed into educated to Average Precision (AP) values of zero.8479, zero.7161, and zero.9085 for goal items Car, Person, and Fire, respectively. The ODTS-primarily based totally Tunnel CCTV Accident Detection System changed into then examined the use of 4 twist of fate recordings, one for every twist of fate, the use of a educated deep gaining knowledge of version. As a consequence, inside 10 seconds, the gadget can locate all injuries. The maximum important truth is that once the education dataset grows larger, the detection functionality of ODTS can be robotically multiplied with none adjustments to the programme codes.
基于ODTS &R-CNN的深度学习算法在隧道监控不良条件下事故检测中的应用
在本项目中,目标检测和跟踪系统(ODTS)可以与著名的深度获取知识社区,用于目标检测的更快区域卷积神经网络(Faster R-CNN)和用于隧道闭路电视计算机检测和跟踪意外情况的常规目标跟踪规则集一起使用,这些意外情况可能是(1)错误驾驶(WWD),(2)停车,(3) ODTS中下车的人以实时视频主体为入口,利用目标检测生成边界盒(Bounding Box, BBox)结果,对现代和以前视频帧的边界盒进行评估,为每一个移动和诊断的项目分配一个完全唯一的ID广泛的种类。这种技术允许您实时显示移动的项目,这在传统的项目检测框架中很难做到。随着隧道中的一组场景图,在ODTS中对版本的深度获取知识变成了教育到平均精度(AP)值为零。8479年,零。7161和0。目标项Car, Person和Fire分别为9085。将以odts为主的全隧道闭路电视事故检测系统改造成使用4条曲折的命运记录,每条曲折一次,使用一个受过教育的深度获取知识的版本。因此,在10秒内,这个小工具就能定位所有的伤害。最重要的事实是,一旦教育数据集变得更大,ODTS的检测功能可以在不调整程序代码的情况下机器人地成倍增加。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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