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Artificial Intelligence for Contemporary Wireless and Healthcare Applications Raed Shubair [email protected] & [email protected] 1

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Page 1: Artificial Intelligence for Contemporary Wireless and ... · Raed Shubair 30 Regional Director, IEEE Region 8 Middle East, IEEE Signal Processing Society Chair, IEEE Educational Initiatives

Artificial Intelligence for Contemporary Wireless and Healthcare Applications

Raed [email protected] & [email protected]

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Page 2: Artificial Intelligence for Contemporary Wireless and ... · Raed Shubair 30 Regional Director, IEEE Region 8 Middle East, IEEE Signal Processing Society Chair, IEEE Educational Initiatives

Multidisciplinary Research

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Antennas & Propagation

Wireless Communication

Signal Processing

Nano Bioscience &

Nano Medicine

Machine Learning

Page 3: Artificial Intelligence for Contemporary Wireless and ... · Raed Shubair 30 Regional Director, IEEE Region 8 Middle East, IEEE Signal Processing Society Chair, IEEE Educational Initiatives

Outlne

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Motivation RF Features Different Indoor Scenarios

Dataset from Real Measurements

Algorithms vs Features

Machine Learning Approach

Deep Learning Approach

Page 4: Artificial Intelligence for Contemporary Wireless and ... · Raed Shubair 30 Regional Director, IEEE Region 8 Middle East, IEEE Signal Processing Society Chair, IEEE Educational Initiatives

Motivation

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New dimension for optimum communication

Intelligence of physical space Why Environment Classification:

efficient power consumption

appropriate modulation scheme

Page 5: Artificial Intelligence for Contemporary Wireless and ... · Raed Shubair 30 Regional Director, IEEE Region 8 Middle East, IEEE Signal Processing Society Chair, IEEE Educational Initiatives

Multi-disciplinary Problem

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Propagation: type of signal transmission for each indoor scenario

Antennas: RF signal measurements

Communication: how critical is multipath

Signal Processing: manipulating RF feature for input to algorithms

Machine Learning Deep Learning

Page 6: Artificial Intelligence for Contemporary Wireless and ... · Raed Shubair 30 Regional Director, IEEE Region 8 Middle East, IEEE Signal Processing Society Chair, IEEE Educational Initiatives

Indoor Scenarios

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Page 7: Artificial Intelligence for Contemporary Wireless and ... · Raed Shubair 30 Regional Director, IEEE Region 8 Middle East, IEEE Signal Processing Society Chair, IEEE Educational Initiatives

Each Indoor Environment: Unique “Spatial” Signature!

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Page 8: Artificial Intelligence for Contemporary Wireless and ... · Raed Shubair 30 Regional Director, IEEE Region 8 Middle East, IEEE Signal Processing Society Chair, IEEE Educational Initiatives

Each Indoor Environment: Unique “Spatial” Signature!

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Each Environment has its own Fingerprint!

Page 9: Artificial Intelligence for Contemporary Wireless and ... · Raed Shubair 30 Regional Director, IEEE Region 8 Middle East, IEEE Signal Processing Society Chair, IEEE Educational Initiatives

Illustration of RF Dataset:Each Environment has its own Fingerprint!

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Page 10: Artificial Intelligence for Contemporary Wireless and ... · Raed Shubair 30 Regional Director, IEEE Region 8 Middle East, IEEE Signal Processing Society Chair, IEEE Educational Initiatives

UMAP: Each Environment has its own Fingerprint!

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Page 11: Artificial Intelligence for Contemporary Wireless and ... · Raed Shubair 30 Regional Director, IEEE Region 8 Middle East, IEEE Signal Processing Society Chair, IEEE Educational Initiatives

Machine Learning Algorithm: DT

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Page 12: Artificial Intelligence for Contemporary Wireless and ... · Raed Shubair 30 Regional Director, IEEE Region 8 Middle East, IEEE Signal Processing Society Chair, IEEE Educational Initiatives

Machine Learning Algorithm: SVM

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Page 13: Artificial Intelligence for Contemporary Wireless and ... · Raed Shubair 30 Regional Director, IEEE Region 8 Middle East, IEEE Signal Processing Society Chair, IEEE Educational Initiatives

Machine Learning Algorithm: k-NN

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Page 14: Artificial Intelligence for Contemporary Wireless and ... · Raed Shubair 30 Regional Director, IEEE Region 8 Middle East, IEEE Signal Processing Society Chair, IEEE Educational Initiatives

Cascaded Approach:

Machine Learning & Hybrid Features

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Page 15: Artificial Intelligence for Contemporary Wireless and ... · Raed Shubair 30 Regional Director, IEEE Region 8 Middle East, IEEE Signal Processing Society Chair, IEEE Educational Initiatives

Cascaded Approach: CNN & Learned Features

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Page 16: Artificial Intelligence for Contemporary Wireless and ... · Raed Shubair 30 Regional Director, IEEE Region 8 Middle East, IEEE Signal Processing Society Chair, IEEE Educational Initiatives

Advantage of Environment Identification

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Page 17: Artificial Intelligence for Contemporary Wireless and ... · Raed Shubair 30 Regional Director, IEEE Region 8 Middle East, IEEE Signal Processing Society Chair, IEEE Educational Initiatives

Classification Accuracy:Different Classifiers & RF Features

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Page 18: Artificial Intelligence for Contemporary Wireless and ... · Raed Shubair 30 Regional Director, IEEE Region 8 Middle East, IEEE Signal Processing Society Chair, IEEE Educational Initiatives

Confusion Matrix:

an alternative representation of classification

accuracy

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Page 19: Artificial Intelligence for Contemporary Wireless and ... · Raed Shubair 30 Regional Director, IEEE Region 8 Middle East, IEEE Signal Processing Society Chair, IEEE Educational Initiatives

New Concept: “Hybrid RF Features” Fingerprint

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Page 20: Artificial Intelligence for Contemporary Wireless and ... · Raed Shubair 30 Regional Director, IEEE Region 8 Middle East, IEEE Signal Processing Society Chair, IEEE Educational Initiatives

Performance of Various Hybrid Features

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Page 21: Artificial Intelligence for Contemporary Wireless and ... · Raed Shubair 30 Regional Director, IEEE Region 8 Middle East, IEEE Signal Processing Society Chair, IEEE Educational Initiatives

Performance of Various Hybrid Features

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Page 22: Artificial Intelligence for Contemporary Wireless and ... · Raed Shubair 30 Regional Director, IEEE Region 8 Middle East, IEEE Signal Processing Society Chair, IEEE Educational Initiatives

Convolutional Neural Network for Feature Learning

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Page 23: Artificial Intelligence for Contemporary Wireless and ... · Raed Shubair 30 Regional Director, IEEE Region 8 Middle East, IEEE Signal Processing Society Chair, IEEE Educational Initiatives

Deep Learning using CNN provides Perfect Classification!

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Page 24: Artificial Intelligence for Contemporary Wireless and ... · Raed Shubair 30 Regional Director, IEEE Region 8 Middle East, IEEE Signal Processing Society Chair, IEEE Educational Initiatives

Deep Learning using CNN providesmost-accurate Indoor Localization!

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Page 25: Artificial Intelligence for Contemporary Wireless and ... · Raed Shubair 30 Regional Director, IEEE Region 8 Middle East, IEEE Signal Processing Society Chair, IEEE Educational Initiatives

Confusion Matrix Using CNN-based

Deep Learning

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Page 26: Artificial Intelligence for Contemporary Wireless and ... · Raed Shubair 30 Regional Director, IEEE Region 8 Middle East, IEEE Signal Processing Society Chair, IEEE Educational Initiatives

CNN with environment classification produced different features for different environments!

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Page 27: Artificial Intelligence for Contemporary Wireless and ... · Raed Shubair 30 Regional Director, IEEE Region 8 Middle East, IEEE Signal Processing Society Chair, IEEE Educational Initiatives

Computational Compelxity

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Page 28: Artificial Intelligence for Contemporary Wireless and ... · Raed Shubair 30 Regional Director, IEEE Region 8 Middle East, IEEE Signal Processing Society Chair, IEEE Educational Initiatives

References

• M. I. AlHajri, N. T. Ali and R. M. Shubair, "Classification of Indoor Environments for IoT Applications: A Machine Learning Approach," in IEEE Antennas and Wireless Propagation Letters, vol. 17, no. 12, pp. 2164-2168, Dec. 2018.

• M. I. AlHajri, N. T. Ali and R. M. Shubair, "A Machine Learning Approach for the Classification of Indoor Environments Using RF Signatures," 2018 IEEE Global Conference on Signal and Information Processing (GlobalSIP), Anaheim, CA, USA, 2018, pp. 1060-1062.

• M. I. AlHajri, N. T. Ali and R. M. Shubair, "Indoor Localization for IoT Using Adaptive Feature Selection: A Cascaded Machine Learning Approach," in IEEE Antennas and Wireless Propagation Letters, vol. 18, no. 11, pp. 2306-2310, Nov. 2019.

• M. I. AlHajri, N. T. Ali, and R. M. Shubair, “2.4 GHz indoor channel measurements,” IEEE Dataport, 2018. [Online]. Available: http://dx.doi.org/10.21227/ggh1-6j32

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Page 29: Artificial Intelligence for Contemporary Wireless and ... · Raed Shubair 30 Regional Director, IEEE Region 8 Middle East, IEEE Signal Processing Society Chair, IEEE Educational Initiatives

Acknowledgement

Mohamed Ibrahim AlHajriPhD Candidate & Graduate Research Assistant

Claude E. Shannon Communication and Network GroupResearch Laboratory of Electronics & EECS Department

Massachusetts Institute of Technology (MIT)

Page 30: Artificial Intelligence for Contemporary Wireless and ... · Raed Shubair 30 Regional Director, IEEE Region 8 Middle East, IEEE Signal Processing Society Chair, IEEE Educational Initiatives

Raed Shubair

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Regional Director, IEEE Region 8 Middle East, IEEE Signal Processing SocietyChair, IEEE Educational Initiatives Program, IEEE Antennas and Propagation Society

Editor-in-Chief, Journal of Electromagnetics and Antennas Applications and TechnologiesEditor, IEEE Journal of Electromagnetics, RF, and Microwaves in Medicine and Biology

Founding Member: IEEE ComSoc, IEEE SPS, IEEE APS, IEEE MTTS, IEEE EMBSSenior Editor, IEEE Open Journal of Antennas and Propagation

Counselor, IEEE Student Branch, New York University Abu DhabiBoard Member, European School of Antennas

Co-Founder, MIT Scholars of the EmiratesFellow, MIT Electromagnetics Academy

[email protected] & [email protected]