comunicación de congreso
Evaluation of denoising algorithms for footsteps sound classification in noisy environments
Fecha
2021Registro en:
10.1109/BIP53678.2021.9613035
Autor
Brenes Jiménez, Carlos
Caravaca Mora, Ronald
Coto Jiménez, Marvin
Institución
Resumen
Identifying a person using footsteps sounds is part
of the recent research in developing biometrics, systems designed
to identify an individual in a group using body measurements.
The sound of footsteps has a short history in this field, and
present particular challenges. One of the most important is the
background noise, given that any microphone installed on the
floor with the purpose of recording footstep sounds will eventually
record background noise and many other sounds as well. In
this paper, we evaluate the combination of several denoising
and classification algorithms for a person’s identification under
several noisy conditions so as to establish a baseline in the
field of distant sound recognition of footsteps. The results show
the convenience of applying the denoising algorithms only in
cases where the signal is affected by the high-noise level, which
indicates the convenience of using real-time adaptive filters or
more robust algorithms for both denoising and classification.