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Minimum Description Feature Selection for Complexity Reduction in Machine Learning-Based Wireless Positioning

Published: 13 June 2024 Publication History

Abstract

Recently, deep learning approaches have provided solutions to difficult problems in wireless positioning (WP). Although these WP algorithms have attained excellent and consistent performance against complex channel environments, the computational complexity coming from processing high-dimensional features can be prohibitive for mobile applications. In this work, we design a novel positioning neural network (P-NN) that utilizes the minimum description features to substantially reduce the complexity of deep learning-based WP. P-NN’s feature selection strategy is based on maximum power measurements and their temporal locations to convey information needed to conduct WP. We improve P-NN’s learning ability by intelligently processing two different types of inputs: sparse image and measurement matrices. Specifically, we implement a self-attention layer to reinforce the training ability of our network. We also develop a technique to adapt feature space size, optimizing over the expected information gain and the classification capability quantified with information-theoretic measures on signal bin selection. Numerical results show that P-NN achieves a significant advantage in performance-complexity tradeoff over deep learning baselines that leverage the full power delay profile (PDP). In particular, we find that P-NN achieves a large improvement in performance for low SNR, as unnecessary measurements are discarded in our minimum description features.

References

[1]
S. Kuutti, R. Bowden, Y. Jin, P. Barber, and S. Fallah, “A survey of deep learning applications to autonomous vehicle control,” IEEE Trans. Intell. Transp. Syst., vol. 22, no. 2, pp. 712–733, Feb. 2021.
[2]
W. Wang and K. Siau, “Artificial intelligence, machine learning, automation, robotics, future of work and future of humanity: A review and research agenda,” J. Database Manag., vol. 30, no. 1, pp. 61–79, 2019.
[3]
S. Y. Choi and D. Cha, “Unmanned aerial vehicles using machine learning for autonomous flight; state-of-the-art,” Adv. Robot., vol. 33, no. 6, pp. 265–277, Mar. 2019.
[4]
S. T. Arzo, C. Naiga, F. Granelli, R. Bassoli, M. Devetsikiotis, and F. H. P. Fitzek, “A theoretical discussion and survey of network automation for IoT: Challenges and opportunity,” IEEE Internet Things J., vol. 8, no. 15, pp. 12021–12045, Aug. 2021.
[5]
M. Cominelli, P. Patras, and F. Gringoli, “Dead on arrival: An empirical study of the Bluetooth 5.1 positioning system,” in Proc. 13th Int. Workshop Wireless Netw. Testbeds, Exp. Eval. Characterization, New York, NY, USA, Oct. 2019, pp. 13–20.
[6]
V. Bianchi, P. Ciampolini, and I. D. Munari, “RSSI-based indoor localization and identification for ZigBee wireless sensor networks in smart homes,” IEEE Trans. Instrum. Meas., vol. 68, no. 2, pp. 566–575, Feb. 2019.
[7]
S. He and S.-H. G. Chan, “Wi-Fi fingerprint-based indoor positioning: Recent advances and comparisons,” IEEE Commun. Surveys Tuts., vol. 18, no. 1, pp. 466–490, 1st Quart., 2016.
[8]
F. Mazhar, M. G. Khan, and B. Sällberg, “Precise indoor positioning using UWB: A review of methods, algorithms and implementations,” Wireless Pers. Commun., vol. 97, no. 3, pp. 4467–4491, Dec. 2017.
[9]
S. Gezici and H. V. Poor, “Position estimation via ultra-wide-band signals,” Proc. IEEE, vol. 97, no. 2, pp. 386–403, Feb. 2009.
[10]
L. Yuan, H. Chen, R. Ewing, E. Blasch, and J. Li, “3-D indoor positioning based on passive radio frequency signal strength distribution,” IEEE Internet Things J., vol. 10, no. 15, pp. 13933–13944, Aug. 2023.
[11]
D. Ni, O. A. Postolache, C. Mi, M. Zhong, and Y. Wang, “UWB indoor positioning application based on Kalman filter and 3-D TOA localization algorithm,” in Proc. 11th Int. Symp. Adv. Topics Elect. Eng. (ATEE), Mar. 2019, pp. 1–6.
[12]
B. Huang, L. Xie, and Z. Yang, “TDOA-based source localization with distance-dependent noises,” IEEE Trans. Wireless Commun., vol. 14, no. 1, pp. 468–480, Jan. 2015.
[13]
M. Arash, H. Mirghasemi, I. Stupia, and L. Vandendorpe, “Localization efficiency in massive MIMO systems,” 2020, arXiv:2003.07978.
[14]
M. Bshara, U. Orguner, F. Gustafsson, and L. Van Biesen, “Fingerprinting localization in wireless networks based on received-signal-strength measurements: A case study on WiMAX networks,” IEEE Trans. Veh. Technol., vol. 59, no. 1, pp. 283–294, Jan. 2010.
[15]
S. Subedi and J.-Y. Pyun, “Practical fingerprinting localization for indoor positioning system by using beacons,” J. Sensors, vol. 2017, pp. 1–16, Jan. 2017.
[16]
D. Li, B. Zhang, and C. Li, “A feature-scaling-based k-nearest neighbor algorithm for indoor positioning systems,” IEEE Internet Things J., vol. 3, no. 4, pp. 590–597, Aug. 2016.
[17]
I. Guvenc and C.-C. Chong, “A survey on TOA based wireless localization and NLOS mitigation techniques,” IEEE Commun. Surveys Tuts., vol. 11, no. 3, pp. 107–124, 3rd Quart., 2009.
[18]
M. Katwe, P. Ghare, P. K. Sharma, and A. Kothari, “NLOS error mitigation in hybrid RSS-TOA-based localization through semi-definite relaxation,” IEEE Commun. Lett., vol. 24, no. 12, pp. 2761–2765, Dec. 2020.
[19]
J. Fayyad, M. A. Jaradat, D. Gruyer, and H. Najjaran, “Deep learning sensor fusion for autonomous vehicle perception and localization: A review,” Sensors, vol. 20, no. 15, p. 4220, Jul. 2020.
[20]
F. Alhomayani and M. H. Mahoor, “Deep learning methods for fingerprint-based indoor positioning: A review,” J. Location Based Services, vol. 14, no. 3, pp. 129–200, Jul. 2020.
[21]
X. Feng, K. A. Nguyen, and Z. Luo, “A survey of deep learning approaches for WiFi-based indoor positioning,” J. Inf. Telecommun., vol. 6, no. 2, pp. 163–216, Apr. 2022.
[22]
L. Yu, M. Laaraiedh, S. Avrillon, and B. Uguen, “Fingerprinting localization based on neural networks and ultra-wideband signals,” in Proc. IEEE Int. Symp. Signal Process. Inf. Technol. (ISSPIT), Dec. 2011, pp. 184–189.
[23]
H. Wymeersch, S. Marano, W. M. Gifford, and M. Z. Win, “A machine learning approach to ranging error mitigation for UWB localization,” IEEE Trans. Commun., vol. 60, no. 6, pp. 1719–1728, Jun. 2012.
[24]
D.-H. Kim, A. Farhad, and J.-Y. Pyun, “UWB positioning system based on LSTM classification with mitigated NLOS effects,” IEEE Internet Things J., vol. 10, no. 2, pp. 1822–1835, Feb. 2023.
[25]
D. T. A. Nguyen, H.-G. Lee, E.-R. Jeong, H. L. Lee, and J. Joung, “Deep learning-based localization for UWB systems,” Electronics, vol. 9, no. 10, p. 1712, Oct. 2020.
[26]
A. Poulose and D. S. Han, “UWB indoor localization using deep learning LSTM networks,” Appl. Sci., vol. 10, no. 18, p. 6290, 2020.
[27]
D. T. A. Nguyen, J. Joung, and X. Kang, “Deep gated recurrent unit-based 3D localization for UWB systems,” IEEE Access, vol. 9, pp. 68798–68813, 2021.
[28]
J. Gao, D. Wu, F. Yin, Q. Kong, L. Xu, and S. Cui, “MetaLoc: Learning to learn wireless localization,” IEEE J. Sel. Areas Commun., vol. 41, no. 12, pp. 3831–3847, Dec. 2023.
[29]
L. Lin, X. Guo, M. Zhao, H. Li, and N. Ansari, “TransLoc: A heterogeneous knowledge transfer framework for fingerprint-based indoor localization,” IEEE Trans. Wireless Commun., vol. 20, no. 6, pp. 3628–3642, Jun. 2021.
[30]
J. Fontaine, M. Ridolfi, B. Van Herbruggen, A. Shahid, and E. De Poorter, “Edge inference for UWB ranging error correction using autoencoders,” IEEE Access, vol. 8, pp. 139143–139155, 2020.
[31]
Z. Zheng, S. Yan, L. Sun, H. Shu, and X. Zhou, “NN-LCS: Neural network and linear coordinate solver fusion method for UWB localization in car keyless entry system,” Sensors, vol. 23, no. 5, p. 2694, Mar. 2023.
[32]
P. Roy and C. Chowdhury, “A survey of machine learning techniques for indoor localization and navigation systems,” J. Intell. Robotic Syst., vol. 101, no. 3, p. 63, Mar. 2021.
[33]
Z. Lalama, S. Boulfekhar, and F. Semechedine, “Localization optimization in WSNs using meta-heuristics optimization algorithms: A survey,” Wireless Pers. Commun., vol. 122, no. 2, pp. 1197–1220, Jan. 2022.
[34]
A. K. Panja, S. F. Karim, S. Neogy, and C. Chowdhury, “A novel feature based ensemble learning model for indoor localization of smartphone users,” Eng. Appl. Artif. Intell., vol. 107, Jan. 2022, Art. no.
[35]
W. Zhang, K. Yu, W. Wang, and X. Li, “A self-adaptive AP selection algorithm based on multiobjective optimization for indoor WiFi positioning,” IEEE Internet Things J., vol. 8, no. 3, pp. 1406–1416, Feb. 2021.
[36]
R. Vijayanand and D. Devaraj, “A novel feature selection method using whale optimization algorithm and genetic operators for intrusion detection system in wireless mesh network,” IEEE Access, vol. 8, pp. 56847–56854, 2020.
[37]
M. H. Nadimi-Shahraki, H. Zamani, Z. A. Varzaneh, and S. Mirjalili, “A systematic review of the whale optimization algorithm: Theoretical foundation, improvements, and hybridizations,” Arch. Comput. Methods Eng., vol. 30, no. 7, pp. 4113–4159, Sep. 2023.
[38]
IEEE Standard for Low-Rate Wireless Networks-Amendment 1: Enhanced Ultra Wideband (UWB) Physical Layers (PHYs) and Associated Ranging Techniques, Standard IEEE, 2020, pp. 1–174.
[39]
A. F. Molisch et al. Channel Model-Final Report, Standard IEEE, 2004.
[40]
D. Dardari, C.-C. Chong, and M. Win, “Threshold-based time-of-arrival estimators in UWB dense multipath channels,” IEEE Trans. Commun., vol. 56, no. 8, pp. 1366–1378, Aug. 2008.
[41]
A. Giorgetti and M. Chiani, “Time-of-arrival estimation based on information theoretic criteria,” IEEE Trans. Signal Process., vol. 61, no. 8, pp. 1869–1879, Apr. 2013.
[42]
H. Urkowitz, “Energy detection of unknown deterministic signals,” Proc. IEEE, vol. 55, no. 4, pp. 523–531, Apr. 1967.
[43]
M. Wax and T. Kailath, “Detection of signals by information theoretic criteria,” IEEE Trans. Acoust., Speech, Signal Process., vol. ASSP-33, no. 2, pp. 387–392, Apr. 1985.
[44]
A. Vaswani et al., “Attention is all you need,” in Proc. Adv. Neural Inf. Process. Syst., vol. 30, 2017, pp. 1–11.
[45]
H. Zhang, I. Goodfellow, D. Metaxas, and A. Odena, “Self-attention generative adversarial networks,” in Proc. Int. Conf. Mach. Learn., 2019, pp. 7354–7363.
[46]
D. P. Kingma and J. Ba, “Adam: A method for stochastic optimization,” 2014, arXiv:1412.6980.
[47]
H. Akaike, “A new look at the statistical model identification,” IEEE Trans. Autom. Control, vol. AC-19, no. 6, pp. 716–723, Dec. 1974.
[48]
J. Marcum, “A statistical theory of target detection by pulsed radar,” IRE Trans. Inf. Theory, vol. 6, no. 2, pp. 59–267, 1960.
[49]
F. Perez-Cruz, “Kullback–Leibler divergence estimation of continuous distributions,” in Proc. IEEE Int. Symp. Inf. Theory, Jul. 2008, pp. 1666–1670.

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