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Street-Level Landmarks Acquisition Based on SVM Classifiers

机译:基于SVM分类器的街道级地标采集

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摘要

High-density street-level reliable landmarks are one of the important foundations for street-level geolocation. However, the existing methods cannot obtain enough street-level landmarks in a short period of time. In this paper, a street-level landmarks acquisition method based on SVM (Support Vector Machine) classifiers is proposed. Firstly, the port detection results of IPs with known services are vectorized, and the vectorization results are used as an input of the SVM training. Then, the kernel function and penalty factor are adjusted for SVM classifiers training, and the optimal SVM classifiers are obtained. After that, the classifier sequence is constructed, and the IPs with unknown service are classified using the sequence. Finally, according to the domain name corresponding to the IP, the relationship between the classified server IP and organization name is established. The experimental results in Guangzhou and Wuhan city in China show that the proposed method can be as a supplement to existing typical methods since the number of obtained street-level landmarks is increased substantially, and the median geolocation error using evaluated landmarks is reduced by about 2 km.
机译:高密度街道可靠的地标是街道级地理定位的重要基础之一。但是,现有方法在短时间内无法获得足够的街道地标。本文提出了一种基于SVM(支持向量机)分类器的街道级地标采集方法。首先,矢量化了具有已知服务的IP的端口检测结果,并且矢量化结果用作SVM训练的输入。然后,针对SVM分类器训练调整内核函数和惩罚因子,获得最佳的SVM分类器。之后,构造分类器序列,使用序列对具有未知服务的IPS进行分类。最后,根据对应于IP的域名,建立了分类服务器IP和组织名称之间的关系。在中国广州和武汉市的实验结果表明,该方法可以作为现有典型方法的补充,因为获得的街道层次标志的数量大幅增加,使用评估的地质标志的中位地理位置误差减少了约2 km。

著录项

  • 来源
    《Computers, Materials & Continua》 |2019年第2期|591-606|共16页
  • 作者单位

    State Key Laboratory of Mathematical Engineering and Advanced Computing Zhengzhou 450001 China Zhengzhou Science and Technology Institute Zhengzhou 450001 China;

    Henan Institute of Animal Husbandry Economics Zhengzhou 450044 China;

    State Key Laboratory of Mathematical Engineering and Advanced Computing Zhengzhou 450001 China Zhengzhou Science and Technology Institute Zhengzhou 450001 China;

    State Key Laboratory of Mathematical Engineering and Advanced Computing Zhengzhou 450001 China Zhengzhou Science and Technology Institute Zhengzhou 450001 China;

    State University of New York at Buffalo New York 14260-1660 United States;

    State Key Laboratory of Mathematical Engineering and Advanced Computing Zhengzhou 450001 China Zhengzhou Science and Technology Institute Zhengzhou 450001 China;

  • 收录信息
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Landmarks acquisition; SVM; street-level; IP geolocation;

    机译:地标收购;SVM;街道水平;IP地理位置;

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