Window Size Impact in Human Activity Recognition
Metadatos
Mostrar el registro completo del ítemAutor
Baños Legrán, Oresti; Gálvez Gómez, Juan Manuel; Damas Hermoso, Miguel; Pomares Cintas, Héctor Emilio; Rojas Ruiz, IgnacioEditorial
MDPI
Materia
activity recognition segmentation windowing
Fecha
2014-04-09Referencia bibliográfica
Baños Legrán, O. et. al. Sensors 2014, 14, 6474-6499. [https://doi.org/10.3390/s140406474]
Patrocinador
Spanish CICYT Project SAF2010-20558; Junta de Andalucia Project P09-TIC-175476; FPU Spanish grant, AP2009-2244Resumen
Signal segmentation is a crucial stage in the activity recognition process; however,
this has been rarely and vaguely characterized so far. Windowing approaches are normally
used for segmentation, but no clear consensus exists on which window size should be
preferably employed. In fact, most designs normally rely on figures used in previous works,
but with no strict studies that support them. Intuitively, decreasing the window size allows for
a faster activity detection, as well as reduced resources and energy needs. On the contrary,
large data windows are normally considered for the recognition of complex activities. In
this work, we present an extensive study to fairly characterize the windowing procedure,
to determine its impact within the activity recognition process and to help clarify some of
the habitual assumptions made during the recognition system design. To that end, some
of the most widely used activity recognition procedures are evaluated for a wide range of
window sizes and activities. From the evaluation, the interval 1–2 s proves to provide the
best trade-off between recognition speed and accuracy. The study, specifically intended for
on-body activity recognition systems, further provides designers with a set of guidelines
devised to facilitate the system definition and configuration according to the particular
application requirements and target activities.