Scalable Representation of RSSIs for Multi-Building and Multi-Floor Indoor Localization Based on Deep Neural Networks
Table of Contents
Abstract
Since the SURF project titled "Indoor localization based on Wi-Fi fingerprinting with deep learning and fuzzy sets" in 2017, we have been investigating large-scale multi-building and multi-floor indoor localization based on a single dataset for received signal strength indicators (RSSIs) and deep neural network (DNN) models for the integrated estimation of building, floor, and location with focus on the scalability of a DNN model and its outputs. In this project, we focus on inputs to a DNN model and study the scalable representation of RSSIs for DNN-based large-scale multi-building and multi-floor indoor localization.
Research questions
- How can we represent in a scalable way large-dimensional RSSIs (e.g., 520-dimensional vectors in the UJIIndoorLoc database [1]) as inputs to a DNN model for multi-building and multi-floor indoor localization?
- What are the best DNN architectures for scalable representation of RSSIs (e.g., time series representation)?
People
Research Assistants
- Sihao (Leonard) Li (E-mail: Sihao.Li_at_liverpool.ac.uk; PhD Candidate, University of Liverpool and XJTLU)
- Zhe (Tim) Tang (E-mail: Zhe.Tang_at_liverpool.ac.uk; PhD Candidate, University of Liverpool and XJTLU)
Grants
- Xi'an Jiaotong-Liverpool University Summer Undergraduate Research Fellowships (SURF) programme (under grant SURF-2022076).
Duration
- Jun./2022–Aug./2022 (10 weeks)
Meetings
- 06/27/2022: Kickoff meeting, 2-3 PM, Skype
- Kyeong Soo (Joseph) Kim, Project overview
Outcomes
GitHub repositories
- To be added…
Publications
- To be added…
References
- Alejandro Pasos Ruiz, Michael Flynn, James Large, Matthew Middlehurst, and Anthony Bagnall, "The great multivariate time series classification bake off: a review and experimental evaluation of recent algorithmic advances," Data Mining and Knowledge Discussions, vol. 35, no. 2, pp. 401-449, Mar. 2021.
- Hassan Ismail Fawaz, Germain Forestier, Jonathan Weber, Lhassane Idoumghar, and Pierre-Alain Muller, "Deep learning for time series classification: A review," Data Mining and Knowledge Discovery, vol. 33, no. 4, pp. 917-963, Mar. 2019.
- Zhe Tang, Sihao Li, Kyeong Soo Kim, and Jeremy Smith, "Multi-output Gaussian process-based data augmentation for multi-building and multi-floor indoor localization," accepted for presentation at IEEE Fourth International Workshop on Data Driven Intelligence for Networks and Systems (DDINS) (organized in conjunction with IEEE ICC 2022), Mar. 7, 2022.
- Abdalla Elesawi and Kyeong Soo Kim, "Hierarchical multi-building and multi-floor indoor localization based on recurrent neural networks," Proc. 2021 Ninth International Symposium on Computing and Networking Workshops (CANDARW 2021), Matsue, Japan, pp. 193-196, Nov. 23-26, 2021.
- Jaehoon Cha, Kyeong Soo Kim, and Sanghyuk Lee, "Hierarchical auxiliary learning," Machine Learning: Science and Technology, vol. 1, no. 4, pp. 1-11, Sep. 11, 2020.
- Zhenghang Zhong, Zhe Tang, Xiangxing Li, Tiancheng Yuan, Yang Yang, Wei Meng, Yuanyuan Zhang, Renzhi Sheng, Naomi Grant, Chongfeng Ling, Xintao Huan, Kyeong Soo Kim and Sanghyuk Lee, "XJTLUIndoorLoc: A new fingerprinting database for indoor localization and trajectory estimation based on Wi-Fi RSS and geomagnetic field," Proc. 2018 CANDAR, Takayama, Japan, Nov. 27-30, 2018.
- Kyeong Soo Kim, "Hybrid building/floor classification and location coordinates regression using a single-input and multi-output deep neural network for large-scale indoor localization based on Wi-Fi fingerprinting," Proc. 2018 CANDAR, Takayama, Japan, Nov. 27-30, 2018.
- Jaehoon Cha, Sanghyuk Lee, and Kyeong Soo Kim, "Automatic building and floor classification using two consecutive multi-layer perceptron," Proc. ICCAS 2018, Pyeongchang, Korea, Oct. 2018.
- Kyeong Soo Kim, Sanghyuk Lee, and Kaizhu Huang "A scalable deep neural network architecture for multi-building and multi-floor indoor localization based on Wi-Fi fingerprinting," Big Data Analytics, vol. 3, no. 4, pp. 1–17, Apr. 2018.
- Kyeong Soo Kim, Ruihao Wang, Zhenghang Zhong, Zikun Tan, Haowei Song, Jaehoon Cha, and Sanghyuk Lee, "Large-scale location-aware services in access: Hierarchical building/floor classification and location estimation using Wi-Fi fingerprinting based on deep neural networks," (Extended version of the FOAN 2017 paper) Fiber and Integrated Optics, vol. 37, no. 5, pp. 277–289, Apr. 10, 2018.
- Kyeong Soo Kim, Ruihao Wang, Zhenghang Zhong, Zikun Tan, Haowei Song, Jaehoon Cha, and Sanghyuk Lee, "Large-scale location-aware services in access: Hierarchical building/floor classification and location estimation using Wi-Fi fingerprinting based on deep neural networks," Proc. FOAN 2017, Munich, Germany, Nov. 7, 2017.
- J. Torres-Sospedra et al., "UJIIndoorLoc: A new multi-building and multi-floor database for WLAN fingerprint-based indoor localization problems," Proc. International Conference on Indoor Positioning and Indoor Navigation (IPIN), Busan, Korea, Oct. 2014, pp. 261–270.
- P. Bahl and V. N. Padmanabhan, "RADAR: An in-building RF-based user location and tracking system," Proc. 2000 IEEE INFOCOM, vol. 2, 2000, pp. 775–784.
Related Projects
- XJTLU PGRS1912001: Scalable and Energy-Efficient Multi-Building and Multi-Floor Indoor Localisation/Navigation based on Deep Neural Networks with a Multivariate Database
- XJTLU KSF-E-25: Feasibility Study of XJTLU Campus-Wide Indoor Localization System Based on Deep Neural Networks
- XJTLU SURF-201913: Analysis of XJTLUIndoorLoc Multivariate Dataset for DNN-Based Indoor Localization
- XJTLU SURF-201830: Trajectory Estimation of Mobile Users/Devices based on Wi-Fi Fingerprinting and Deep Neural Networks
- XJTLU SURF-201739: Indoor Localisation Based on Wi-Fi Fingerprinting with Fuzzy Sets
- XJTLU RISGC-2017-4: Feasibility Assessment and Roadmap for XJTLU Campus Information and Visitor Service System as A Test Bed for Large-Scale Location-Aware Services in SIP