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Generalized Image Recognition Algorithm for Sign Inventory

机译:标志库存的通用图像识别算法

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摘要

Image detection and recognition algorithms are crucial for developing an intelligent sign inventory system using video log images. The technical challenge is to detect and recognize more than 670 different types of signs specified in the Manual on Uniform Traffic Control Devices (MUTCD). This paper develops a generalized image recognition algorithm that can differentiate various types of signs based on shape, color, location, probability distribution function (PDF), and Haar features trained and selected by the AdaBoost cascade method. Contributions of the paper are as follows: first, development of a generalized sign recognition algorithm instead of a sign-specific algorithm; second, development and incorporation of a new location PDF in the algorithm that describes the nonuniform distribution of actual sign locations in images; third, application and incorporation of the AdaBoost cascade method to automatically train and select Haar features; and fourth, validation of the proposed algorithm using real-world roadway video log images. The proposed algorithm has been tested with video log images collected on 1-75 from Macon to Atlanta, covering 140 km of rural and urban roadways. The developed algorithm successfully recognized 28 out of 31 speed limit signs (a 90.3% recognition rate) and five false positives out of 136 images containing speed limit signs. These results show significant promise for development of an intelligent sign inventory system. With sufficient image training data sets, the proposed algorithm can be applied to other sign types.
机译:图像检测和识别算法对于使用视频日志图像开发智能标牌库存系统至关重要。技术挑战是要检测和识别《统一交通控制设备手册》(MUTCD)中指定的670多种不同类型的标志。本文开发了一种通用的图像识别算法,该算法可以根据形状,颜色,位置,概率分布函数(PDF)以及通过AdaBoost级联方法训练和选择的Haar特征来区分各种符号。本文的贡献如下:首先,开发一种通用的符号识别算法,而不是特定于符号的算法;第二,在算法中开发和合并新的位置PDF,以描述图像中实际符号位置的不均匀分布;第三,应用和合并AdaBoost级联方法以自动训练和选择Haar功能;第四,使用现实世界的巷道视频记录图像对所提出的算法进行验证。拟议的算法已通过从Macon到亚特兰大1-75采集的视频日志图像进行了测试,图像覆盖了140公里的农村和城市道路。所开发的算法成功识别了31个限速标志中的28个(识别率为90.3%)和136个包含限速标志的图像中的五个假阳性。这些结果显示了开发智能标牌库存系统的巨大希望。有了足够的图像训练数据集,可以将所提出的算法应用于其他符号类型。

著录项

  • 来源
    《Journal of Computing in Civil Engineering》 |2011年第2期|p.149-158|共10页
  • 作者单位

    Dalian Maritime University, Linghai Rd. No.l, Dalian 116026, P.R.China and Georgia Institute of Technology, 210 Technology Circle, Savannah, GA 31407;

    Georgia Institute of Technology, 210 Technology Circle, Savannah,GA 31407;

  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    traffic signs; inventories; algorithm.;

    机译:交通标识;库存;算法。;

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