面向道路车辆检测与计数的增强深度学习推理前照灯识别方法

Michael Angelo D. Ligayo, Michael T. Costa, Ryan R. Tejada, L. L. Lacatan, Christopher Franco Cunanan
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引用次数: 5

摘要

汽车已经成为许多人生活的重要组成部分;从它被发明到20世纪越来越受欢迎。虽然它们提供了便利的好处,但它们也有一定的负面影响,因为它们增加了空气污染和全球变暖,以及处理不当时的风险。近年来,道路上的车辆数量正在迅速增加,这引起了不同的主要关注。车辆数量增加的主要影响之一是造成道路交通拥堵,特别是在城市地区。这种交通拥堵成为世界上许多城市的主要问题之一,包括菲律宾的马尼拉大都会。交通管理部门讨论并实施了许多方案,但似乎仍未得到解决。近年来,交通拥堵变得不可预测,城市的一些部分没有经历交通拥堵,然后突然交通拥挤到那个地区。此外,交通拥堵可能每时每刻都在发生。为此,本研究提出了一种用于道路车辆检测与计数的车灯识别系统。这项研究的重点是检测每辆车的前灯,这些前灯将在安装的摄像头的周边被看到。当我们训练人工智能识别这些场景中的前灯时,系统可以在白天和夜间检测到前灯车辆。该系统的应用范围可包括监察区内车辆的数量,以及交通管理当局可利用该系统监察区内的交通情况,以便提供即时的解决方案,例如改道、单行道改建等。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Augmented Deep Learning Inference Approach of Vehicle Headlight Recognition for On-Road Vehicle Detection and Counting
Vehicles have been a big part of many lives; from the time it is invented and as it increases popularity in the 20th century. Though they offer the benefit of convenience, they also have certain negative effects as they add to air pollution and global warming, as well as risks when they are not handled properly. In recent years, the number of vehicles on the road is rapidly increasing and it causes different major concerns. One of the major effects of this increasing volume of vehicles is the traffic congestion it caused on our roads especially in the urban areas. This traffic congestion became one of the major problems in many cities in the world including Metro Manila, Philippines. Many options are discussed and implemented by the traffic management but it seems that it is still unsolved. In recent years, traffic congestions became unpredictable, there are parts of the cities that don’t experience traffic congestion then suddenly traffic builds up to that area. Also, traffic congestion might happen every hour of the day. With this concern, the study proposed a system for vehicle headlight recognition for on-road vehicle detection and counting. This study focused on the detection of the headlight of every vehicle that will be seen on the perimeter of the installed camera. The system can detect headlight vehicles during daytime and nighttime as we trained the AI to recognized the headlights in these scenarios. Possible applications of this system can be in monitoring the volume of vehicles within the area and it can be used by traffic management authority in monitoring the build-up of traffic or traffic situation in an area so that they can provide an immediate solution, such as re-routing, one-way street conversions, etc.
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