Reliability and generalization of gait biometrics using 3D inertial sensor data and 3D optical system trajectories
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Artigo Científico
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2022
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Particularities in the individuals’ style of walking have been explored for at least three decades as a
biometric trait, empowering the automatic gait recognition feld. Whereas gait recognition works
usually focus on improving end-to-end performance measures, this work aims at understanding which
individuals’ traces are more relevant to improve subjects’ separability. For such, a manifold projection
technique and a multi-sensor gait dataset were adopted to investigate the impact of each data source
characteristics on this separability. Assessments have shown it is hard to distinguish individuals based
only on their walking patterns in a subject-based identifcation scenario. In this setup, the subjects’
separability is more related to their physical characteristics than their movements related to gait
cycles and biomechanical events. However, this study’s results also points to the feasibility of learning
identity characteristics from individuals’ walking patterns learned from similarities and diferences
between subjects in a verifcation setup. The explorations concluded that periodic components
occurring in frequencies between 6 and 10 Hz are more signifcant for learning these patterns than
events and other biomechanical movements related to the gait cycle, as usually explored in the
literature.
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Área do Conhecimento CNPQ
CIENCIAS EXATAS E DA TERRA::CIENCIA DA COMPUTACAO
ENGENHARIAS::ENGENHARIA BIOMEDICA
CIENCIAS BIOLOGICAS::BIOLOGIA GERAL
ENGENHARIAS::ENGENHARIA BIOMEDICA
CIENCIAS BIOLOGICAS::BIOLOGIA GERAL