基于更快区域卷积神经网络(Faster R-CNN)的多极道路标志检测

Achmad Zulfajri Syaharuddin, Z. Zainuddin, Andani
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引用次数: 2

摘要

建立一个能够服务于各种交通标志的进近系统是一个挑战。处理对象的重要阶段是找到对象,将其划分为几个类别,并用边界框标记对象。然而,在现实中,监控交通标志对象是相当困难的,因为它是基于各种因素,如;其他封闭物体、行驶时间或交通标志情况。本研究旨在使用基于Faster区域的卷积神经网络(Faster R-CNN)算法测量视频记录(单摄像机)监控交通标志的精度水平(检测速度为每秒4-6帧)。交通标志检测系统采用基于Inception v2模型的Faster R-CNN算法,该算法在TensorFlow API框架中实现。更快的R-CNN由2个不同的模块组成。第一个模块是深度卷积神经网络,其功能是构建待检测区域,称为区域建议网络(Regional Proposal network, RPN),第二个模块是Fast R-CNN检测器,其功能是使用先前建议的区域。本系统是基于基于Faster R-CNN方法的交通标志检测系统的制造和测试结果的一个单元检测网络,因此可以看出,在白天和夜间条件下,交通标志的检测结果没有差异。其中白天和夜间的交通标志检测精度测试为100%。
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Multi-Pole Road Sign Detection Based on Faster Region-based Convolutional Neural Network (Faster R-CNN)
Building an approach system that is able to serve various types of traffic signs is a challenge. The important stages in handling an object are finding objects, dividing them into several categories, and marking objects with bounding boxes. However, in reality, monitoring traffic signs objects is quite difficult because it is based on various factors such as; other closed objects, driving times, or traffic sign conditions. This study aims to measure the level of precision in monitoring traffic signs (detection speed of 4–6 frames per second) from video recording (single camera) using the Faster Region based Convolutional Neural Network (Faster R-CNN) algorithm. The traffic sign detection system uses the Faster R-CNN algorithm with Inception v2 model which is implemented in the TensorFlow API framework. The Faster R-CNN consists of 2 different modules. The first module is a deep convolutional neural network which functions to build the area to be detected, which is called the Regional Proposal Network (RPN), and the second module is the Fast R-CNN detector which functions to use the previously proposed area. This system is one unit, a detection network based on the results of the manufacture and testing of a traffic sign detection system based on the Faster R-CNN method, so it can be shown that there is no difference in the results of detection of traffic signs in day and night conditions. Where the precision testing for detection of traffic signs during the day and at night is 100%.
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