Person Identification Using Deep Convolutional Neural Networks On Short-Term Signals From Wearable Sensors
George Retsinas, Panagiotis P. Filntisis, Niki Efthymiou, Emmanouil Theodosis, Athanasia Zlatintsi, Petros Maragos
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In this work, we explore the discriminating ability of short-term signal patterns (e.g. few minutes long) with respect to the person identification task. We focus on signals recorded by simple wearable devices, such as smartwatches, which can measure movements (accelerometer and gyroscope sensors) and biosignals (heart rate monitor). To address the person identification problem, we develop a deep neural network, based on one-dimensional convolutions, which receives raw signals from three different smartwatch sensors and predicts the person wearing the smartwatch. Experimental results indicate that even with signals from wearable sensors collected at intervals of only 10 minutes, different users can be identified with notably high accuracy, revealing the existence of distinct short-term patterns of movement and heart rate between different persons.