Detecting Street Signs in Cities Based on Object Recognition with Machine Leaning and GIS Spatial Analysis

Zihao Wu, Xiaolu Zhou
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引用次数: 2

Abstract

Road traffic signs management is a process that searches, maintains, and builds traffic signs to ensure a normal functioning of traffic systems. Automatic road traffic signs detection is an important feature in smart cities. Existing road assets management systems usually rely on labor-intensive site inventory. Some other approaches use computer vision techniques to recognize traffic signs. Recent approaches combine GPS data and vehicle-based image recognition system to detect traffic signs along with geographic information. This research provides an innovative way to detect traffic signs based on geotagged photos from Google Street View. We used the Single Shot Multi-Box Detector based on a TensorFlow framework to train the recognition model. This process is implemented on a graphic card with CUDA acceleration to speed up the training process. Results showed that stop signs at road intersections can be accurately detected over 99%. This research helps to reduce workload for traditional traffic asset inventory. Our workflow can be used to detect other traffic signs and applied to other cities.
基于机器学习和GIS空间分析的城市道路标志识别
道路交通标志管理是为了保证交通系统的正常运行而对交通标志进行搜索、维护和建设的过程。道路交通标志自动检测是智慧城市的一个重要特征。现有的道路资产管理系统通常依赖于劳动密集型的现场库存。其他一些方法使用计算机视觉技术来识别交通标志。最近的方法是结合GPS数据和基于车辆的图像识别系统来检测交通标志以及地理信息。这项研究提供了一种基于谷歌街景的地理标记照片来检测交通标志的创新方法。我们使用基于TensorFlow框架的单镜头多盒检测器来训练识别模型。这个过程是实现在图形卡与CUDA加速,以加快训练过程。结果表明,十字路口停车标志的准确率在99%以上。该研究有助于减少传统交通资产盘点的工作量。我们的工作流程可以用来检测其他交通标志,并应用到其他城市。
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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