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    An End-to-End Multi-Task and Fusion CNN for Inertial-Based Gait Recognition.

    • Autor
      Delgado-Escaño, Rubén; Castro, Francisco M.; Ramos-Cózar, JuliánAutoridad Universidad de Málaga; Marín Jiménez, Manuel Jesús; Guil-Mata, NicolásAutoridad Universidad de Málaga
    • Fecha
      2019
    • Editorial/Editor
      IEEE
    • Palabras clave
      Aprendizaje automático
    • Resumen
      People identification using gait information (i.e., the way a person walks) obtained from inertial sensors is a robust approach that can be used in multiple situations where vision-based systems are not applicable. Typically, previous methods use hand-crafted features or deep learning approaches with pre-processed features as input. In contrast, we present a new deep learning-based end-to-end approach that employs raw inertial data as input. By this way, our approach is able to automatically learn the best representations without any constraint introduced by the pre-processed features. Moreover, we study the fusion of information from multiple inertial sensors and multi-task learning from multiple labels per sample. Our proposal is experimentally validated on the challenging dataset OU-ISIR, which is the largest available dataset for gait recognition using inertial information. After conducting an extensive set of experiments to obtain the best hyper-parameters, our approach is able to achieve state-of-the-art results. Specifically, we improve both the identification accuracy (from 83.8% to 94.8%) and the authentication equal-error-rate (from 5.6 to 1.1). Our experimental results suggest that: 1) the use of hand-crafted features is not necessary for this task as deep learning approaches using raw data achieve better results; 2) the fusion of information from multiple sensors allows to improve the results; and, 3) multi-task learning is able to produce a single model that obtains similar or even better results in multiple tasks than the corresponding models trained for a single task.
    • URI
      https://hdl.handle.net/10630/37142
    • DOI
      https://dx.doi.org/10.1109/ACCESS.2018.2886899
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    An_End-to-End_Multi-Task_and_Fusion_CNN_for_Inertial-Based_Gait_Recognition.pdf (5.543Mb)
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    REPOSITORIO INSTITUCIONAL UNIVERSIDAD DE MÁLAGA
    REPOSITORIO INSTITUCIONAL UNIVERSIDAD DE MÁLAGA
     

     

    REPOSITORIO INSTITUCIONAL UNIVERSIDAD DE MÁLAGA
    REPOSITORIO INSTITUCIONAL UNIVERSIDAD DE MÁLAGA