Chrome Extension
WeChat Mini Program
Use on ChatGLM

Dbf: A General Framework For Anomaly Detection In Rfid Systems

IEEE INFOCOM 2017 - IEEE CONFERENCE ON COMPUTER COMMUNICATIONS(2017)

Cited 9|Views87
No score
Abstract
RFID technologies are making their way into numerous applications, including inventory management, supply chain, product tracking, transportation, logistics, etc. One important application is to automatically detect anomalies in RFID systems, such as missing tags, unknown tags, or cloned tags due to theft, management error, or targeted attacks. Existing solutions are all designed to detect a certain type of RFID anomalies, but lack a general functionality for detecting different types of anomalies. This paper attempts to propose a general framework for anomaly detection in RFID systems, thereby reducing the complexity for readers and tags to implement different anomaly-detection protocols. We introduce a new concept of differential Bloom filter (DBF), which turns physical-layer signal data into a segmented Bloom filter that encodes the IDs of abnormal tags. As a case study, we propose a protocol that builds DBF for identifying all missing tags in an efficient way. We implement a prototype for missing-tag identification using USRP and WISP tags to verify the effectiveness our protocol, and use large-scale simulations for performance evaluation. The results show that our solution can significantly improve time efficiency, when comparing with the best existing work.
More
Translated text
Key words
anomaly detection,RFID systems,anomaly-detection protocols,differential Bloom filter,DBF,segmented Bloom filter,abnormal tags,missing-tag identification,WISP tags,RFID technologies,RFID anomalies
AI Read Science
Must-Reading Tree
Example
Generate MRT to find the research sequence of this paper
Chat Paper
Summary is being generated by the instructions you defined