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Echo-ID: Smart User Identification Leveraging Inaudible Sound Signals | IEEE Journals & Magazine | IEEE Xplore

Echo-ID: Smart User Identification Leveraging Inaudible Sound Signals


Echo-ID Usage Scenario.

Abstract:

In this article, we present a novel user identification mechanism for smart spaces called Echo-ID (referred to as E-ID). Our solution relies on inaudible sound signals fo...Show More

Abstract:

In this article, we present a novel user identification mechanism for smart spaces called Echo-ID (referred to as E-ID). Our solution relies on inaudible sound signals for capturing the user’s behavioral tapping/typing characteristics while s/he types the PIN on a PIN-PAD, and uses them to identify the corresponding user from a set of {N} enrolled inhabitants. E-ID proposes an all-inclusive pipeline that generates and transmits appropriate sound signals, and extracts a user-specific imprint from the recorded signals (E-Sign). For accurate identification of the corresponding user given an E-Sign sample, E-ID makes use of deep-learning (i.e., CNN for feature extraction) and SVM classifier (for making the identification decision). We implemented a proof of the concept of E-ID by leveraging the commodity speaker and microphone. Our evaluations revealed that E-ID can identify the users with an average accuracy of 93% to 78% from an enrolled group of 2-5 subjects, respectively.
Echo-ID Usage Scenario.
Published in: IEEE Access ( Volume: 8)
Page(s): 194508 - 194522
Date of Publication: 19 October 2020
Electronic ISSN: 2169-3536

References

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