Analysis of Spatio-temporal Representations for Robust Footstep Recognition with Deep Residual Neural Networks

Omar Costilla Reyes, Patricia Scully, Krikor Ozanyan

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    Abstract

    Human footsteps can provide a unique behavioural pattern for robust biometric systems. We propose spatio-temporal footstep representations from floor-only sensor data in advanced computational models for automatic biometric verification. Our models deliver an artificial intelligence capable of effectively differentiating the fine-grained variability of footsteps between legitimate users (clients) and impostor users of the biometric system. The methodology is validated in the largest to date footstep database, containing nearly 20,000 footstep signals from more than 120 users. The database is organized by considering a large cohort of impostors and a small set of clients to verify the reliability of biometric systems. We provide experimental results in 3 critical data-driven security scenarios, according to the amount of footstep data made available for model training: at airports security checkpoints (smallest training set), workspace environments (medium training set) and home environments (largest training set). We report state-of-the-art footstep recognition rates with an optimal equal false acceptance and false rejection rate of 0.7% (equal error rate), an improvement ratio of 371% from previous state-of-the-art. We perform a feature analysis of deep residual neural networks showing effective clustering of clients footstep data and provide insights of the feature learning process.
    Original languageEnglish
    Article number8275035
    Pages (from-to)285-296
    Number of pages12
    JournalIEEE Transactions on Pattern Analysis and Machine Intelligence
    Volume41
    Issue number2
    DOIs
    Publication statusPublished - 1 Feb 2019

    Keywords

    • Biometric system
    • deep learning
    • floor sensor system
    • footstep recognition
    • verification system

    Research Beacons, Institutes and Platforms

    • Manchester Institute for Collaborative Research on Ageing

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