RF-ray
Joint RF and Linguistics Domain Learning for Object
Article Ecrit par: Ding, Han ; Gong, Yihong ; Zhai, Linwei ; Zhao, Cui ; Hou, Songjiang ; Wang, Ge ; Xi*, Wei ; Zhao, Jizhong ;
Résumé: This paper presents a non-invasive design, namely RF-ray, to recognize the shape and material of an object simultaneously. RF-ray puts the object approximate to an RFID tag array, and explores the propagation effect as well as coupling effect between RFIDs and the object for sensing. In contrast to prior proposals, RF-ray is capable to recognize unseen objects, including unseen shape-material pairs and unseen materials within a certain container. To make it real, RF-ray introduces a sensing capability enhancement module and leverages a two-branch neural network for shape profiling and material identification respectively. Furthermore, we incorporate a Zero-Shot Learning based embedding module that incorporates the well-learned linguistic features to generalize RF-ray to recognize unseen materials. We build a prototype of RF-ray using commodity RFID devices. Comprehensive real-world experiments demonstrate our system can achieve high object recognition performance.
Langue:
Anglais