Pemodelan Identifikasi Objek Kendaraan Bermotor Menggunakan Faster Region based Convolutional Neural Network (R-CNN) Berbasis Python

Rosalia Arum Kumalasanti, Erma Susanti
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Abstract

The vehicles are currently experiencing a surge in number and variation. This is evident from the kinds of vehicles that are passing through the highway area. The rise in the number of motorized vehicles will surely give a squeeze to the traffic density. The increase in the number of motor vehicles is one of the biggest factors in the impact of the congestion. The congestion can also cause damage to the highway. It's supposed to be the focus of the local government in dealing with the problem. Each road point has its own potential, so it is necessary to have a calculation in identifying the number of vehicles and the type of vehicles that are slipped on the road. Motor vehicle identification can be solved using the Faster Region based Convolutional Neural Network approach. Faster R-CNN is a deep learning architecture used to detect inside computers. Research will run at several highway points to take samples of video at a certain time, for identified the type of vehicle. Vehicle labelling will facilitate the calculation of the number of vehicles crossing the road in a given unit of time. The vehicle identification needs are used to see the density of the highway so that it can help the local government in making the right decision or solution to reduce the traffic density. The results of research such as quantitative data can be easily used to give the right picture and decision.
使用基于 Python 的更快区域卷积神经网络 (R-CNN) 建立机动车辆目标识别模型
目前,车辆的数量和种类都在激增。这一点从通过高速公路区域的车辆种类就可以看出。机动车数量的增加必然会挤压交通密度。机动车数量的增加是造成拥堵的最大因素之一。拥堵还会对公路造成破坏。这应该是地方政府处理问题的重点。每个道路点都有自己的潜力,因此有必要对道路上滑行的车辆数量和类型进行计算识别。机动车识别可以使用基于 Faster 区域的卷积神经网络方法来解决。Faster R-CNN 是一种深度学习架构,用于检测计算机内部。研究将在几个高速公路点采集某一时间段的视频样本,用于识别车辆类型。车辆标签将有助于计算在给定单位时间内横穿马路的车辆数量。通过车辆识别需求,可以了解公路的交通密度,从而帮助当地政府做出正确的决策或解决方案,降低交通密度。定量数据等研究成果可以很容易地用于提供正确的信息和决策。
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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