Publication | Closed Access
RF-Identity
43
Citations
59
References
2021
Year
Gait AnalysisPerson IdentificationKinesiologyEngineeringData SciencePattern RecognitionStatic Person IdentificationBiometricsHuman IdentificationWearable TechnologyAutomatic IdentificationHuman MotionHuman MovementRadio Frequency IdentificationGait PatternsHealth Sciences
Person identification plays a critical role in a large range of applications. Recently, RF based person identification becomes a hot research topic due to the contact-free nature of RF sensing that is particularly appealing in current COVID-19 pandemic. However, existing systems still have multiple limitations: i) heavily rely on the gait patterns of users for identification; ii) require a large amount of data to train the model and also extensive retraining for new users and iii) require a large frequency bandwidth which is not available on most commodity RF devices for static person identification. This paper proposes RF-Identity, an RFID-based identification system to address the above limitations and the contribution is threefold. First, by integrating walking pattern features with unique body shape features (e.g., height), RF-Identity achieves a high accuracy in person identification. Second, RF-Identity develops a data augmentation scheme to expand the size of the training data set, thus reducing the human effort in data collection. Third, RF-Identity utilizes the tag diversity in spatial domain to identify static users without a need of large frequency bandwidth. Extensive experiments show an identification accuracy of 94.2% and 95.9% for 50 dynamic and static users, respectively.
| Year | Citations | |
|---|---|---|
Page 1
Page 1