基于更快R-CNN的交通标志和道路物体检测实现

E. Güney, C. Bayilmis
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引用次数: 8

摘要

交通标志和道路物体检测是影响驾驶员安全的重要问题。随着自动驾驶汽车和驾驶员辅助系统的发展,它变得流行起来。本研究提出了一种实时系统,可以通过摄像头检测交通标志和驾驶环境中的各种物体。本研究采用更快的R-CNN架构作为检测方法。这种架构是一种众所周知的两阶段对象检测方法。通过收集各种图像来创建数据集,用于模型的训练和测试。该数据集由1880幅图像组成,其中包含了使用GTSRB数据集从土耳其收集的交通标志和物体。将这些图像进行组合,并按80/20的比例划分为训练集和测试集。该模型的训练在计算机环境下进行了8.5小时,大约10000次迭代。实验结果表明,Faster R-CNN具有鲁棒性交通标志和目标检测的实时性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Implementation of Traffic Signs and Road Objects Detection Using Faster R-CNN
Traffic signs and road objects detection is significant issue for driver safety. It has become popular with the development of autonomous vehicles and driver-assistant systems. This study presents a real-time system that detects traffic signs and various objects in the driving environment with a camera. Faster R-CNN architecture was used as a detection method in this study. This architecture is a well-known two-stage approach for object detection. Dataset was created by collecting various images for training and testing of the model. The dataset consists of 1880 images containing traffic signs and objects collected from Turkey with the GTSRB dataset. These images were combined and divided into the training set and testing set with the ratio of 80/20. The model's training was carried out in the computer environment for 8.5 hours and approximately 10000 iterations. Experimental results show the real-time performance of Faster R-CNN for robustly traffic signs and objects detection.
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