期刊文献+

An Efficient Machine Learning Approach for Indoor Localization 被引量:5

An Efficient Machine Learning Approach for Indoor Localization
下载PDF
导出
摘要 Indoor localization has gained much attention over several decades due to enormous applications. However, the accuracy of indoor localization is hard to improve because the signal propagation has small scale effects which leads to inaccurate measurements. In this paper, we propose an efficient learning approach that combines grid search based kernel support vector machine and principle component analysis. The proposed approach applies principle component analysis to reduce high dimensional measurements. Then we design a grid search algorithm to optimize the parameters of kernel support vector machine in order to improve the localization accuracy. Experimental results indicate that the proposed approach reduces the localization error and improves the computational efficiency comparing with K-nearest neighbor, Back Propagation Neural Network and Support Vector Machine based methods. Indoor localization has gained much attention over several decades due to enormous applications. However, the accuracy of indoor localization is hard to improve because the signal propagation has small scale effects which leads to inaccurate measurements. In this paper, we propose an efficient learning approach that combines grid search based kernel support vector machine and principle component analysis. The proposed approach applies principle component analysis to reduce high dimensional measurements. Then we design a grid search algorithm to optimize the parameters of kernel support vector machine in order to improve the localization accuracy. Experimental results indicate that the proposed approach reduces the localization error and improves the computational efficiency comparing with K-nearest neighbor, Back Propagation Neural Network and Support Vector Machine based methods.
出处 《China Communications》 SCIE CSCD 2017年第11期141-150,共10页 中国通信(英文版)
基金 supported by“the Fundamental Research Funds for the Central Universities No. 2017JBM016”
关键词 indoor localization machine learning SVM PCA indoor localization machinelearning SVM PCA
  • 相关文献

参考文献5

二级参考文献51

  • 1SHI YuZhi & ZHOU HuiCheng Faculty of Infrastructure Engineering,Dalian University of Technology,Dalian 116024,China.Research on monthly flow uncertain reasoning model based on cloud theory[J].Science China(Technological Sciences),2010,53(9):2408-2413. 被引量:8
  • 2Zhang D, Ma J, Chen C% et aL An RF-based sys- tem for tracking transceiver-free objects [C]// Pervasive Computing and Communic- ations, 2007. PerCom'07. Fifth Annual IEEE Internation- al Conference on. IEEE, 2007: 135-144.
  • 3Bahl P, Padmanabhan V N. RADAR: An in-build- ing RF-based user location and tracking sys- tem[C]//INFOCOM 2000. Nineteenth Annual Joint Conference of the IEEE Computer and Communications Societies. Proceedings. IEEE. leee, 2000, 2: 775-784.
  • 4Ni L M, Liu Y, Lau Y C, et al. LANDMARC: indoor location sensing using active RFID [J]. Wireless networks, 2004, 10(6): 701-710.
  • 5Yang D B, Gonzalez-Banos H H, Guibas L J. Counting people in crowds with a real-time network of simple image sensors[C]//Comput- er Vision, 2003. Proceedings. Ninth IEEE Inter- national Conference on, IEEE, 2003:122-129.
  • 6Mautz R. Indoor positioning technologies [D]. Habilitationsschrift ETH Zirich, 2012, 2012.
  • 7Kivimiki T, Vuorela T, Peltola P, et al. A review on device-free passive indoor positioning meth- ods[J]. International Journal of Smart Home, 2014, 8(1): 71-94.
  • 8Zruba G V, Huber M, Kamangar F A, et al. Indoor location tracking using RSSI readings from a single Wi-Fi access point[J]. Wireless networks, 2007, 13(2): 221-235.
  • 9Feldmann S, Kyamakya K, Zapater A, et al. An Indoor Bluetooth-Based Positioning System: Concept, Implementation and Experimental Evaluation[C]//International Conference on Wireless Networks. 2003:109-113.
  • 10Wang Y, Liu J, Chen Y, et al. E-eyes: device-free location-oriented activity identification using fine-grained wifi signatures[C]//Proceedings of the 20th annual international conference on Mobile computing and networking. ACM, 2014: 617-628.

共引文献25

同被引文献37

引证文献5

二级引证文献15

相关作者

内容加载中请稍等...

相关机构

内容加载中请稍等...

相关主题

内容加载中请稍等...

浏览历史

内容加载中请稍等...
;
使用帮助 返回顶部