Fusing RFID and computer vision for fine-grained object tracking

May 1, 2017·
Chunhui Duan
Chunhui Duan
Corresponding author
,
Xing Rao
,
Lei Yang
,
Yunhao Liu
· 2 min read
Type
Publication
IEEE International Conference on Computer Communications, 1-9
Status
Peer-reviewed
publications

Abstract

In recent years, both the RFID and computer vision technologies have been widely employed in indoor scenarios aimed at different goals while faced with respective limitations. For example, the RFID-based EAS system is useful in quickly identifying tagged objects but the accompanying false alarm problem is troublesome and hard to tackle with except that the accurate trajectory of the target tag can be easily acquired. On the other side, the CV system performs fairly well in tracking multiple moving objects precisely while finding it difficult to screen out the specific target among them. To overcome the above limitations, we present TagVision, a hybrid RFID and computer vision system for fine-grained localization and tracking of tagged objects. A fusion algorithm is proposed to organically combine the position information given by the CV subsystem, and phase data output by the RFID subsystem. In addition, we employ the probabilistic model to eliminate the measurement error caused by thermal noise and device diversity. We have implemented TagVision with COTS camera and RFID devices and evaluated it extensively in our lab environment. Experimental results show that TagVision can achieve 98% blob matching accuracy and 10.33mm location tracking precision.

Citation

C. Duan, X. Yang, L. Yang, and Y. Liu, “Fusing RFID and Computer Vision for Fine-Grained Object Tracking,” in Proceedings of the IEEE International Conference on Computer Communications(INFOCOM), 2017, pp. 1-9.

中文引用(GB/T 7714)

Duan C, Rao X, Yang L, et al. Fusing RFID and Computer Vision for Fine-Grained Object Tracking[C]//Proceedings of the IEEE International Conference on Computer Communications(INFOCOM). 2017: 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.