Overview of the proposed system. (a) Capture of in-air handwritten signature gesture using Wi-Fi CSI signals (b) Data preprocessing steps (c) User identification process ...
Abstract:
This paper conducts a feasibility study regarding the use of the Wi-Fi channel state information for user recognition based on in-air handwritten signatures. A novel syst...Show MoreMetadata
Abstract:
This paper conducts a feasibility study regarding the use of the Wi-Fi channel state information for user recognition based on in-air handwritten signatures. A novel system for identity recognition is thus proposed to observe for distinctive signal distortions along the propagation path for different users. The system capitalizes on the vast availability of Wi-Fi signals for signal analysis without needing additional hardware infra-structure. Since the patterns of the raw Wi-Fi signals are sensitive to the signer’s location, a transfer learning has been adopted to cope with the positional variation. Specifically, features trained at one position are transferred to classify signals collected at another position via a single shot retraining. A kernel and range space projection has been adopted for the single shot retraining. Our experiments show encouraging results for the proposed system.
Overview of the proposed system. (a) Capture of in-air handwritten signature gesture using Wi-Fi CSI signals (b) Data preprocessing steps (c) User identification process ...
Published in: IEEE Access ( Volume: 9)