Papers
Topics
Authors
Recent
Gemini 2.5 Flash
Gemini 2.5 Flash
169 tokens/sec
GPT-4o
7 tokens/sec
Gemini 2.5 Pro Pro
45 tokens/sec
o3 Pro
4 tokens/sec
GPT-4.1 Pro
38 tokens/sec
DeepSeek R1 via Azure Pro
28 tokens/sec
2000 character limit reached

A Meta-learning based Generalizable Indoor Localization Model using Channel State Information (2305.13453v2)

Published 22 May 2023 in cs.LG and cs.AI

Abstract: Indoor localization has gained significant attention in recent years due to its various applications in smart homes, industrial automation, and healthcare, especially since more people rely on their wireless devices for location-based services. Deep learning-based solutions have shown promising results in accurately estimating the position of wireless devices in indoor environments using wireless parameters such as Channel State Information (CSI) and Received Signal Strength Indicator (RSSI). However, despite the success of deep learning-based approaches in achieving high localization accuracy, these models suffer from a lack of generalizability and can not be readily-deployed to new environments or operate in dynamic environments without retraining. In this paper, we propose meta-learning-based localization models to address the lack of generalizability that persists in conventionally trained DL-based localization models. Furthermore, since meta-learning algorithms require diverse datasets from several different scenarios, which can be hard to collect in the context of localization, we design and propose a new meta-learning algorithm, TB-MAML (Task Biased Model Agnostic Meta Learning), intended to further improve generalizability when the dataset is limited. Lastly, we evaluate the performance of TB-MAML-based localization against conventionally trained localization models and localization done using other meta-learning algorithms.

Definition Search Book Streamline Icon: https://streamlinehq.com
References (16)
  1. N. Singh, S. Choe, and R. Punmiya, “Machine learning based indoor localization using wi-fi rssi fingerprints: An overview,” IEEE Access, vol. 9, pp. 127 150–127 174, 2021.
  2. Z. Li, K. Xu, H. Wang, Y. Zhao, X. Wang, and M. Shen, “Machine-learning-based positioning: A survey and future directions,” IEEE Network, vol. 33, no. 3, pp. 96–101, 2019.
  3. A. Nessa, B. Adhikari, F. Hussain, and X. N. Fernando, “A survey of machine learning for indoor positioning,” IEEE access, vol. 8, pp. 214 945–214 965, 2020.
  4. C. Finn, P. Abbeel, and S. Levine, “Model-agnostic meta-learning for fast adaptation of deep networks,” in International conference on machine learning.   PMLR, 2017, pp. 1126–1135.
  5. M. Sugano, T. Kawazoe, Y. Ohta, and M. Murata, “Indoor localization system using rssi measurement of wireless sensor network based on zigbee standard.” Wireless and Optical Communications, vol. 538, pp. 1–6, 2006.
  6. X. Zhu, Y. Feng et al., “Rssi-based algorithm for indoor localization,” Communications and Network, vol. 5, no. 02, p. 37, 2013.
  7. P. Bahl and V. N. Padmanabhan, “Radar: An in-building rf-based user location and tracking system,” in Proceedings IEEE INFOCOM 2000. Conference on computer communications. Nineteenth annual joint conference of the IEEE computer and communications societies (Cat. No. 00CH37064), vol. 2.   Ieee, 2000, pp. 775–784.
  8. M. Youssef and A. Agrawala, “The horus wlan location determination system,” in Proceedings of the 3rd international conference on Mobile systems, applications, and services, 2005, pp. 205–218.
  9. M. I. AlHajri, N. T. Ali, and R. M. Shubair, “Indoor localization for iot using adaptive feature selection: A cascaded machine learning approach,” IEEE Antennas and Wireless Propagation Letters, vol. 18, no. 11, pp. 2306–2310, 2019.
  10. J. Xiao, K. Wu, Y. Yi, and L. M. Ni, “Fifs: Fine-grained indoor fingerprinting system,” in 2012 21st international conference on computer communications and networks (ICCCN).   IEEE, 2012, pp. 1–7.
  11. X. Wang, L. Gao, S. Mao, and S. Pandey, “Deepfi: Deep learning for indoor fingerprinting using channel state information,” in 2015 IEEE wireless communications and networking conference (WCNC).   IEEE, 2015, pp. 1666–1671.
  12. H. Chen, Y. Zhang, W. Li, X. Tao, and P. Zhang, “Confi: Convolutional neural networks based indoor wi-fi localization using channel state information,” Ieee Access, vol. 5, pp. 18 066–18 074, 2017.
  13. X. Wang, X. Wang, and S. Mao, “Deep convolutional neural networks for indoor localization with csi images,” IEEE Transactions on Network Science and Engineering, vol. 7, no. 1, pp. 316–327, 2018.
  14. L. Li, X. Guo, M. Zhao, H. Li, and N. Ansari, “Transloc: A heterogeneous knowledge transfer framework for fingerprint-based indoor localization,” IEEE Transactions on Wireless Communications, vol. 20, no. 6, pp. 3628–3642, 2021.
  15. X. Chen, H. Li, C. Zhou, X. Liu, D. Wu, and G. Dudek, “Fidora: Robust wifi-based indoor localization via unsupervised domain adaptation,” IEEE Internet of Things Journal, vol. 9, no. 12, pp. 9872–9888, 2022.
  16. J. Gao, C. Zhang, Q. Kong, F. Yin, L. Xu, and K. Niu, “Metaloc: Learning to learn indoor rss fingerprinting localization over multiple scenarios,” in ICC 2022-IEEE International Conference on Communications.   IEEE, 2022, pp. 3232–3237.
Citations (7)

Summary

We haven't generated a summary for this paper yet.