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A See-through-Wall System for Device-Free Human Motion Sensing Based on Battery-Free RFID

Published: 20 September 2017 Publication History

Abstract

A see-through-wall system can be used in life detection, military fields, elderly people surveillance. and gaming. The existing systems are mainly based on military devices, customized signals or pre-deployed sensors inside the room, which are very expensive and inaccessible for general use. Recently, a low-cost RFID technology has gained a lot of attention in this field. Since phase estimates of a battery-free RFID tag collected by a commercial off-the-shelf (COTS) RFID reader are sensitive to external interference, the RFID tag could be regarded as a battery-free sensor that detects reflections off targeted objects. The existing RFID-based system, however, needs to first learn the environment of the empty room beforehand to separate reflections off the tracked target. Besides, it can only track low-speed metal objects with high-positioning accuracy. Since the human body with its complex surface has a weaker ability to reflect radio frequency (RF) signals than metal objects, a battery-free RFID tag can capture only a subset of the reflections off the human body. To address these challenges, a RFID-based human motion sensing technology, called RF-HMS, is presented to track device-free human motion through walls. At first, we construct transfer functions of multipath channel based on phase and RSSI measurements to eliminate device noise and reflections off static objects like walls and furniture without learning the environment of the empty room before. Then a tag planar array is grouped by many battery-free RFID tags to improve the sensing performance. RF-HMS combines reflections from each RFID tag into a reinforced result. On this basis, we extract phase shifts to detect the absence or presence of any moving persons and further derive the reflections off a single moving person to identify his/her forward or backward motion direction. The results show that RF-HMS can effectively detect the absence or presence of moving persons with 100% accuracy and keep a high accuracy of more than 90% to track human motion directions.

References

[1]
L. M. Ni, Y. Liu, Y. C. Lau, and A. P. Patil. 2004. LANDMARC: Indoor location sensing using active RFID. Wireless Networks 10, 4 (Nov. 2004), 701--710.
[2]
L. Shangguan, Z. Li, Z. Yang, M. Li, and Y. Liu. 2013. OTrack: Order tracking for luggage in mobile RFID systems. In Proceedings of IEEE INFOCOM. IEEE, Turin, 3066--3074.
[3]
S. Shao and R. J. Burkholder. 2013. Item-level RFID tag location sensing utilizing reader antenna spatial diversity. IEEE Sensors Journal 13, 10 (Oct. 2013), 3767--3774.
[4]
C. H. Huang, L. H. Lee, C. C. Ho, L. L. Wu, and Z. H. Lai. 2015. Real-time RFID indoor positioning system based on Kalman-filter drift removal and heron-bilateration location estimation. IEEE Transactions on Instrumentation and Measurement 64, 3 (Mar. 2015), 728--739.
[5]
Z. Zhang, Z. Lu, V. Saakian, X. Qin, Q. Chen, and L. R. Zheng. 2014. Item-level indoor localization with passive UHF RFID based on tag interaction analysis. IEEE Transactions on Industrial Electronics 61, 4 (Apr. 2014), 2122--2135.
[6]
C. Hekimian-Williams, B. Grant, X. Liu, Z. Zhang, and P. Kumar. 2010. Accurate localization of RFID tags using phase difference. In Proceedings of IEEE RFID. IEEE, Orlando, FL, 89--96.
[7]
J. Wang and D. Katabi. 2013. Dude, where's my card?: RFID positioning that works with multipath and non-line of sight. In Proceedings of ACM SIGCOMM. New York, NY, 51--62.
[8]
T. Liu, L. Yang, Q. Lin, Y. Guo, and Y. Liu. 2014. Anchor-free backscatter positioning for RFID tags with high accuracy. In Proceedings of IEEE INFOCOM (Toronto, ON). IEEE, 379--387.
[9]
P. V. Nikitin, R. Martinez, S. Ramamurthy, H. Leland, G. Spiess, and K. V. S. Rao. 2010. Phase-based spatial identification of UHF RFID tags. In Proceedings of IEEE RFID (Orlando, FL). IEEE, 102--109.
[10]
L. Yang, Y. Chen, X. Li, C. Xiao, M. Li, and Y. Liu. 2014. Tagoram: Real-time tracking of mobile RFID tags to high precision using COTS devices. In Proceedings of ACM MobiCom. ACM, New York, NY, 237--248.
[11]
S. He, J. Chen, F. Jiang, D. Yau, G. Xing, and Y. Sun. 2013. Energy provisioning in wireless rechargeable sensor networks. IEEE Transactions on Mobile Computing 12, 10 (Oct. 2013), 1931--1942.
[12]
S. He, D. Shin, J. Zhang, J. Chen, and Y. Sun. 2016. Full-view area coverage in camera sensor networks: Dimension reduction and near-optimal solutions. IEEE Transactions on Vehicular Technology 65, 9 (Sep. 2016), 7448--7461.
[13]
A. Sample and J. R. Smith. 2009. Experimental results with two wireless power transfer systems. In Proceedings of IEEE Radio and Wireless Symposium. IEEE, San Diego, CA, 16--18.
[14]
D. J. Yeager, J. Holleman, R. Prasad, R. S. Joshua, and P. O. Brian. 2009. Neuralwisp: A wirelessly powered neural interface with 1-m range. IEEE Transactions on Biomedical Circuits and System 3, 6 (Dec. 2009), 379--387.
[15]
S. Naderiparizi, A. N. Parks, Z. Kapetanovic, B. Ransford, and J. R. Smith. 2015. Wispcam: A battery-free rfid camera. In Proceedings of IEEE RFID. IEEE, San Diego, CA, 166--173.
[16]
Y. Shu, P. Cheng, Y. Gu, J. Chen, and T. He. 2015. TOC: Localizing wireless rechargeable sensors with time of charge. ACM Transactions on Sensor Network 11, 3 (May 2015), Article 44.
[17]
Y. Zhang, S. He, and J. Chen. 2016. Data gathering optimization by dynamic sensing and routing in rechargeable sensor network. IEEE/ACM Transactions on Networking 24, 3 (Jun. 2016), 1632--1646.
[18]
I. Sabek and M. Youssef. 2015. ACE: An accurate and efficient multi-entity device-free WLAN localization system. IEEE Transactions on Mobile Computing 14, 2 (Feb. 2015), 261--273.
[19]
K. Joshi, D. Bharadia, M. Kotaru, and S. Katti. 2015. WiDeo: Fine-grained device-free motion tracing using RF backscatter. In Proceedings of USENIX NSDI. USENIX Association, Oakland, CA, 189--204.
[20]
B. Schleicher, I. Nasr, A. Trasser, and H. Schumacher. 2013. IR-UWB radar demonstrator for ultra-fine movement detection and vital-sign monitoring. IEEE Transactions on Microwave Theory and Techniques 61, 5 (May 2013), 2076--2085.
[21]
F. Adib and D. Katabi. 2013. See through walls with WiFi!. In Proceedings of ACM SIGCOMM. ACM, New York, NY, 75--86.
[22]
F. Adib, Z. Kabelac, D. Katabi, and R. C. Miller. 2013. 3D Tracking via body radio reflections. In Proceedings of USENIX NSDI. USENIX Association, Seattle, WA, 317--329.
[23]
F. Adib, Z. Kabelac, and D. Katabi. 2015. Multi-person localization via RF body reflections. In Proceedings of USENIX NSDI. USENIX Association, Oakland, CA, 279--292.
[24]
S. Kidera, T. Sakamoto, and T. Sato. 2009. High-resolution 3-D imaging algorithm with an envelope of modified spheres for UWB through-the-wall radars. IEEE Transactions on Antennas and Propagation 57, 11 (Nov. 2009), 3520--3529.
[25]
Y. Yang and A. E. Fathy. 2009. Development and implementation of a real-time see-through-wall radar system based on FPGA. IEEE Transactions on Geoscience and Remote Sensing 47, 5 (May 2009), 1270--1280.
[26]
V. Venkatasubramanian, H. Leung, and X. Liu. 2009. Chaos UWB radar for through-the-wall imaging. IEEE Transactions on Image Processing 18, 6 (Jun. 2009), 1255--1265.
[27]
P. Beckmann and A. Spizzichino. 1987. The Scattering of Electromagnetic Waves from Rough Surfaces. Artech House, New York, NY.
[28]
K. Kleisouris, B. Firner, R. Howard, Y. Zhang, and R. P. Martin. 2010. Detecting intra-room mobility with signal strength descriptors. In Proceedings of ACM MobiHoc. ACM, New York, NY, 71--80.
[29]
M. Seifeldin, A. Saeed, A. E. Kosba, A. El-Keyi, and M. Youssef. 2013. A large-scale device-free passive localization system for wireless environments. IEEE Transactions on Mobile Computing 12, 7 (July 2013), 1321--1334.
[30]
J. Wilson and N. Patwari. 2012. A fade-level skew-laplace signal strength model for device-free localization with wireless networks. IEEE Transactions on Mobile Computing 11, 6 (Jun. 2012), 947--958.
[31]
F. Xiao, X. Yang, M. Yang, L. Sun, R. Wang, and P. Yang. 2016. Surface coverage algorithm in directional sensor networks for 3D complex terrains. Tsinghua Science and Technology 21, 4 (Aug. 2016), 397--406.
[32]
B. D. Zhang, Y. Liu, X. Guo, and L. M. Ni. 2013. RASS: A real-time, accurate, and scalable system for tracking transceiver-free objects. IEEE Transactions on Parallel and Distributed Systems 24, 5 (May 2013), 996--1008.
[33]
B. Gu, V. S. Sheng, K. Y. Tay, W. Romano, and S. Li. 2015. Incremental support vector learning for ordinal regression. Wireless Networks 26, 7 (July 2015), 1403--1416.
[34]
Q. Pu, S. Gupta, S. Gollakota, and S. Patel. 2013. Whole-home gesture recognition using wireless signals. In Proceedings of ACM MobiCom. ACM, New York, NY, 27--38.
[35]
K. Qian, C. Wu, Z. Yang, Y. Liu, and Z. Zhou. 2014. PADS: Passive detection of moving targets with dynamic speed using PHY layer information. In Proceedings of IEEE ICPADS (Hsinchu). IEEE, 1--8.
[36]
F. Adib, C. Y. Hsu, H. Mao, D. Katabi, and F. Durand. 2015. Capturing the human figure through a wall. ACM Transactions on Graphics 34, 6 (Nov. 2015), Article No. 219.
[37]
F. Adib, H. Mao, Z. Kabelac, D. Katabi, and R. C. Miller. 2015. Smart homes that monitor breathing and heart rate. In Proceedings of the ACM Human Factors in Computing Systems. ACM, Seoul, 837--846.
[38]
L. Yang, Q. Lin, X. Li, T. Liu, and Y. Liu. 2015. See through walls with COTS RFID system! In Proceedings of ACM MobiCom. ACM, New York, NY, 487--499.
[39]
D. M. Dobkin. 2012. The RF in RFID, Second Edition: UHF RFID in Practice (2nd. ed.). San Jose, CA.
[40]
L. Yang, Y. Qi, J. Han, C. Wang, and Y. Liu. 2015. Shelving interference and joint identification in large-scale RFID systems. IEEE Transactions on Parallel and Distributed Systems 26, 11 (Nov. 2015), 3149--3159.
[41]
Impinj Inc. 2014. LTK Programmers Guide, Seattle, WA.
[42]
Impinj Inc. 2015. Impinj xArray Deployment Guide, Seattle, WA.

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  • (2023)TomoID: A Scalable Approach to Device Free Indoor Localization via RFID TomographyIEEE INFOCOM 2023 - IEEE Conference on Computer Communications10.1109/INFOCOM53939.2023.10228938(1-10)Online publication date: 17-May-2023
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Published In

cover image ACM Transactions on Embedded Computing Systems
ACM Transactions on Embedded Computing Systems  Volume 17, Issue 1
Special Issue on Autonomous Battery-Free Sensing and Communication, Special Issue on ESWEEK 2016 and Regular Papers
January 2018
630 pages
ISSN:1539-9087
EISSN:1558-3465
DOI:10.1145/3136518
Issue’s Table of Contents
Permission to make digital or hard copies of all or part of this work for personal or classroom use is granted without fee provided that copies are not made or distributed for profit or commercial advantage and that copies bear this notice and the full citation on the first page. Copyrights for components of this work owned by others than ACM must be honored. Abstracting with credit is permitted. To copy otherwise, or republish, to post on servers or to redistribute to lists, requires prior specific permission and/or a fee. Request permissions from [email protected]

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Publication History

Published: 20 September 2017
Accepted: 01 February 2017
Revised: 01 December 2016
Received: 01 May 2016
Published in TECS Volume 17, Issue 1

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Author Tags

  1. RF signals
  2. Radio frequency identification
  3. motion detection
  4. multipath channels
  5. transfer functions

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  • Research-article
  • Research
  • Refereed

Funding Sources

  • Major Program of Jiangsu Higher Education Institutions
  • Jiangsu Planned Projects for Postdoctoral Research
  • China Postdoctoral Science Foundation
  • Key Research and Development Program of Jiangsu Province
  • National Natural Science Foundation of China
  • NSF

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Cited By

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  • (2024)Attention-Enhanced Deep Learning for Device-Free Through-the-Wall Presence Detection Using Indoor WiFi SystemsIEEE Sensors Journal10.1109/JSEN.2023.334648224:4(5288-5302)Online publication date: 15-Feb-2024
  • (2023)TomoID: A Scalable Approach to Device Free Indoor Localization via RFID TomographyIEEE INFOCOM 2023 - IEEE Conference on Computer Communications10.1109/INFOCOM53939.2023.10228938(1-10)Online publication date: 17-May-2023
  • (2023)LoRa-based Human Activity Recognition Using Deep Learning2023 IEEE 3rd International Conference on Electronic Technology, Communication and Information (ICETCI)10.1109/ICETCI57876.2023.10177028(170-175)Online publication date: 26-May-2023
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  • (2022)An AOA and Orientation Angle-Based Localization Algorithm for Passive RFID Tag ArrayWireless Communications and Mobile Computing10.1155/2022/77741662022(1-11)Online publication date: 23-May-2022
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  • (2021)Thru-the-wall Eavesdropping on Loudspeakers via RFID by Capturing Sub-mm Level VibrationProceedings of the ACM on Interactive, Mobile, Wearable and Ubiquitous Technologies10.1145/34949755:4(1-25)Online publication date: 30-Dec-2021
  • (2021)RF-RVM: Continuous Respiratory Volume Monitoring With COTS RFID TagsIEEE Internet of Things Journal10.1109/JIOT.2021.30637188:16(12892-12901)Online publication date: 15-Aug-2021
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