This letter presents a novel, cost-effective, and easy-to-deploy solution to discriminate the direction of goods crossing a UHF radio frequency identification (RFID) gate in a warehouse scenario. The system is based on a grid of UHF-RFID tags deployed on the floor underneath the gate equipped with a single reader antenna. When a transpallet crosses the gate, it shadows the tags of the deployed grid differently, according to the specific direction, namely incoming or outgoing. Such distinguishable signature is employed as input of a recurrent neural network. In particular, the number of readings for each tag is aggregated within short time windows, and a sequence of binary read/missed tag data over the time is extracted. Such temporal sequences are used to train a long short-term memory neural network. Classification performance of the proposed method is shown through a set of measurements in an indoor scenario.

A UHF-RFID Gate Control System Based on a Recurrent Neural Network

Motroni A.;Buffi A.;Nepa P.
2019-01-01

Abstract

This letter presents a novel, cost-effective, and easy-to-deploy solution to discriminate the direction of goods crossing a UHF radio frequency identification (RFID) gate in a warehouse scenario. The system is based on a grid of UHF-RFID tags deployed on the floor underneath the gate equipped with a single reader antenna. When a transpallet crosses the gate, it shadows the tags of the deployed grid differently, according to the specific direction, namely incoming or outgoing. Such distinguishable signature is employed as input of a recurrent neural network. In particular, the number of readings for each tag is aggregated within short time windows, and a sequence of binary read/missed tag data over the time is extracted. Such temporal sequences are used to train a long short-term memory neural network. Classification performance of the proposed method is shown through a set of measurements in an indoor scenario.
2019
Alvarez-Narciandi, G.; Motroni, A.; Pino, M. R.; Buffi, A.; Nepa, P.
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11568/1027164
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