Robust RFID-Based Multi-Object Identification and Tracking with Visual Aids

July 6, 2021·
Junjie Yin
Corresponding author
,
Sicong Liao
Chunhui Duan
Chunhui Duan
,
Xuan Ding
,
Zheng Yang
,
Zuwei Yin
· 2 min read
Type
Publication
IEEE International Conference on Sensing, Communication, and Networking, 1-9
Status
Peer-reviewed
publications

Abstract

Obtaining fine-grained spatial information is of practical importance in RFID-based applications. However, high-precision positioning remains a challenging task in commercial-off-the-shelf (COTS) RFID systems. Inspired by progress in the computer vision (CV) field, researchers propose to combine CV with RFID systems and turn the positioning problem into a matching problem. Promising though it seems, current methods fuse CV and RFID through converting traces of tagged objects extracted from videos by CV into phase sequences for matching, which is a dimension-reduced procedure causing loss of spatial resolution. Consequently, they fail in more harsh conditions such as small tag intervals and low reading rates of tags. To address the limitation, we propose TagFocus, a more robust RFID-enabled system for fine-grained multi-object identification and tracking with visual aids. The key observation of TagFocus is that traces generated by different methods shall be compatible if they are acquired from one identical object. Leveraging this observation, an attention-based sequence-to-sequence (seq2seq) model is trained to generate a simulated trace for each candidate tag-object pair. And the trace of the right pair shall best match the observed trace directly extracted by CV. A prototype of TagFocus is implemented and extensively assessed in lab environments. Experimental results show that our system maintains a matching accuracy of over 89% in harsh conditions, outperforming state-of-the-art schemes by 25%.

Citation

J. Yin, S. Liao, C. Duan, X. Ding, Z. Yang, and Z.Yin, “Robust RFID-Based Multi-Object Identification and Tracking with Visual Aids,” in Proceedings of the IEEE International Conference on Sensing, Communication, and Networking(SECON), 2021, pp. 1-9.

中文引用(GB/T 7714)

Yin J, Liao S, Duan C, et al. Robust RFID-Based Multi-Object Identification and Tracking with Visual Aids[C]//Proceedings of the IEEE International Conference on Sensing, Communication, and Networking(SECON). 2021: 1-9.

Chunhui Duan
Authors
Chunhui Duan (she/her)
Associate Professor
I am Chunhui Duan (段春晖), currently an Associate Professor (tenure-track) in School of Computer Science and Technology, Beijing Institute of Technology. Previously, I worked as a postdoc research fellow at Tsinghua University. I received the B.S. and Ph.D. degrees from the School of Software at Tsinghua University, in 2013 and 2018 respectively, supervised by Prof. Yunhao Liu.

My research interests include RFID, Internet-of-Things, indoor localization, wireless sensing, etc.