Material Identification Via RFID For Smart Shopping
Journal:
arXiv
Published Date:
Apr 24, 2025
Abstract
Cashierless stores rely on computer vision and RFID tags to associate
shoppers with items, but concealed items placed in backpacks, pockets, or bags
create challenges for theft prevention. We introduce a system that turns
existing RFID tagged items into material sensors by exploiting how different
containers attenuate and scatter RF signals. Using RSSI and phase angle, we
trained a neural network to classify seven common containers. In a simulated
retail environment, the model achieves 89% accuracy with one second samples and
74% accuracy from single reads. Incorporating distance measurements, our system
achieves 82% accuracy across 0.3-2m tag to reader separations. When deployed at
aisle or doorway choke points, the system can flag suspicious events in real
time, prompting camera screening or staff intervention. By combining material
identification with computer vision tracking, our system provides proactive
loss prevention for cashierless retail while utilizing existing infrastructure.