Applying Deep Neural Network (DNN) for Robust Indoor Localization in Multi-Building Environment

In the Internet of Things (IoT) era, indoor localization plays a vital role in academia and industry. Wi-Fi is a promising scheme for indoor localization as it is easy and free of charge, even for private networks. However, Wi-Fi has signal fluctuation problems because of dynamic changes of environments and shadowing effects. In this paper, we propose to use a deep neural network (DNN) to achieve accurate localization in Wi-Fi environments. In the localization process, we primarily construct a database having all reachable received signal strengths (RSSs), and basic service set identifiers (BSSIDs). Secondly, we fill the missed RSS values using regression, and then apply linear discriminant analysis (LDA) to reduce features. Thirdly, the 5-BSSIDs having the strongest RSS values are appended with reduced RSS vector. Finally, a DNN is applied for localizing Wi-Fi users. The proposed system is evaluated in the classification and regression schemes using the python programming language. The results show that 99.15% of the localization accuracy is correctly classified. Moreover, the coordinate-based localization provides 50%, 75%, and 93.10% accuracies for errors less than 0.50 m, 0.75 m, and 0.90 m respectively. The proposed method is compared with other algorithms, and our method provides motivated results. The simulation results also show that the proposed method can robustly localize Wi-Fi users in hierarchical and complex wireless environments.

[1]  Shahrokh Valaee,et al.  Compressive Sensing Based Positioning Using RSS of WLAN Access Points , 2010, 2010 Proceedings IEEE INFOCOM.

[2]  Michal R. Nowicki,et al.  Low-effort place recognition with WiFi fingerprints using deep learning , 2016, AUTOMATION.

[3]  Hamid Mehmood,et al.  Indoor Positioning System Using Artificial Neural Network , 2010 .

[4]  C. Laoudias,et al.  Fault tolerant positioning using WLAN signal strength fingerprints , 2010, 2010 International Conference on Indoor Positioning and Indoor Navigation.

[5]  Reza Monir Vaghefi,et al.  A novel multilayer neural network model for TOA-based localization in wireless sensor networks , 2011, The 2011 International Joint Conference on Neural Networks.

[6]  Giuseppe Thadeu Freitas de Abreu,et al.  Indoor positioning: A key enabling technology for IoT applications , 2014, 2014 IEEE World Forum on Internet of Things (WF-IoT).

[7]  Ronald Raulefs,et al.  Recent Advances in Indoor Localization: A Survey on Theoretical Approaches and Applications , 2017, IEEE Communications Surveys & Tutorials.

[8]  Shiwen Mao,et al.  CSI-Based Fingerprinting for Indoor Localization: A Deep Learning Approach , 2016, IEEE Transactions on Vehicular Technology.

[9]  Chien-Sheng Chen,et al.  Artificial Neural Network for Location Estimation in Wireless Communication Systems , 2012, Sensors.

[10]  Engin Zeydan,et al.  An experimental study of indoor RSS-based RF fingerprinting localization using GSM and Wi-Fi signals , 2017, Turkish J. Electr. Eng. Comput. Sci..

[11]  Jason Jianjun Gu,et al.  Deep Neural Networks for wireless localization in indoor and outdoor environments , 2016, Neurocomputing.

[12]  Serkan Günal,et al.  A comparative study on machine learning algorithms for indoor positioning , 2015, 2015 International Symposium on Innovations in Intelligent SysTems and Applications (INISTA).

[13]  M. Kubát An Introduction to Machine Learning , 2017, Springer International Publishing.

[14]  Nesreen I. Ziedan,et al.  Effects of Walls and Floors in Indoor Localization Using Tracking Algorithm , 2016 .

[15]  Takuro Sato,et al.  Localization in Wireless Sensor Networks: A Survey on Algorithms, Measurement Techniques, Applications and Challenges , 2017, J. Sens. Actuator Networks.

[16]  Sanghyuk Lee,et al.  Large-scale location-aware services in access: Hierarchical building/floor classification and location estimation using Wi-Fi fingerprinting based on deep neural networks , 2017, 2017 International Workshop on Fiber Optics in Access Network (FOAN).

[17]  Ronald Y. Chang,et al.  Machine-Learning Indoor Localization with Access Point Selection and Signal Strength Reconstruction , 2016, 2016 IEEE 83rd Vehicular Technology Conference (VTC Spring).

[18]  José M. Claver,et al.  RF-Based Location Using Interpolation Functions to Reduce Fingerprint Mapping , 2015, Sensors.

[19]  Shiwen Mao,et al.  DeepFi: Deep learning for indoor fingerprinting using channel state information , 2015, 2015 IEEE Wireless Communications and Networking Conference (WCNC).

[20]  Antonio F. Gómez-Skarmeta,et al.  An indoor localization system based on artificial neural networks and particle filters applied to intelligent buildings , 2013, Neurocomputing.

[21]  Xuelong Li,et al.  General Tensor Discriminant Analysis and Gabor Features for Gait Recognition , 2007, IEEE Transactions on Pattern Analysis and Machine Intelligence.

[22]  Óscar Cánovas Reverte,et al.  Using Dimensionality Reduction Techniques for Refining Passive Indoor Positioning Systems Based on Radio Fingerprinting , 2017, Sensors.

[23]  Shiann-Shiun Jeng,et al.  Indoor localization at 5GHz using Dynamic machine learning approach (DMLA) , 2017, 2017 International Conference on Applied System Innovation (ICASI).

[24]  Amir Nakib,et al.  Multi-Layer Perceptron Neural Network and nearest neighbor approaches for indoor localization , 2014, 2014 IEEE International Conference on Systems, Man, and Cybernetics (SMC).

[25]  Aboul Ella Hassanien,et al.  Linear discriminant analysis: A detailed tutorial , 2017, AI Commun..

[26]  Sanghyuk Lee,et al.  A scalable deep neural network architecture for multi-building and multi-floor indoor localization based on Wi-Fi fingerprinting , 2017, ArXiv.

[27]  Young-Joo Suh,et al.  Selective AP probing for indoor positioning in a large and AP-dense environment , 2017, J. Netw. Comput. Appl..

[28]  Chutima Prommak,et al.  Robust Floor Determination Algorithm for Indoor Wireless Localization Systems under Reference Node Failure , 2016, Mob. Inf. Syst..

[29]  Yubin Xu,et al.  Localized local fisher discriminant analysis for indoor positioning in wireless local area network , 2013, 2013 IEEE Wireless Communications and Networking Conference (WCNC).

[30]  Rui Araújo,et al.  A multilayer-perceptron based method for variable selection in soft sensor design , 2013 .

[31]  Young-Koo Lee,et al.  Modular Multilayer Perceptron for WLAN Based Localization , 2006, The 2006 IEEE International Joint Conference on Neural Network Proceedings.

[32]  Maria João Nicolau,et al.  Wi-Fi fingerprinting in the real world - RTLS@UM at the EvAAL competition , 2015, 2015 International Conference on Indoor Positioning and Indoor Navigation (IPIN).