• español
    • English
  • Login
  • español 
    • español
    • English
  • Tipos de Publicaciones
    • bookbook partconference objectdoctoral thesisjournal articlemagazinemaster thesispatenttechnical documentationtechnical report
Ver ítem 
  •   IMDEA Networks Principal
  • Ver ítem
  •   IMDEA Networks Principal
  • Ver ítem
JavaScript is disabled for your browser. Some features of this site may not work without it.

MULTI-FI: Enhancing Wi-Fi Sensing Accuracy via Multi-view and Context Fusion

Compartir
Ficheros
Main article (1.113Mb)
Identificadores
URI: https://hdl.handle.net/20.500.12761/2044
Metadatos
Mostrar el registro completo del ítem
Autor(es)
Bravo Aramburu, Iñaki; Fiandrino, Claudio
Fecha
2026-06
Resumen
Wi-Fi sensing enables innovative applications in healthcare and surveillance by providing continuous, contactless monitoring through existing infrastructure. Moreover, exploiting information from different receivers within an environment (i.e., different views) and using it as input to Deep Learning (DL) models facilitates sophisticated use cases. Previous works have demonstrated that this approach, also known as collaborative sensing, increases sensing coverage and significantly boosts accuracy and robustness. However, existing DL models for collaborative Wi-Fi sensing exhibit two critical limitations: (1) They do not consider the optimal fusion point for data from different receivers; (2) They assign equal importance to all receivers, irrespective of their sensing capacity. In this paper, we address the above gaps by proposing MULTI-FI, a novel model enhancement framework consisting of two modules. The first one benchmarks the appropriate fusion strategy, given the charac teristics of the sensing scenario. By leveraging physical context information like location and orientation and the appropriate fusion strategy, the second module instruments a model re-design strategy. Our validation of MULTI-FI spans across several SoTA DL models, three real-world datasets and two applications, and shows improvements over the original model version in every case, with average accuracy gains of 8.2% and up to 29.6%.
Compartir
Ficheros
Main article (1.113Mb)
Identificadores
URI: https://hdl.handle.net/20.500.12761/2044
Metadatos
Mostrar el registro completo del ítem

Listar

Todo IMDEA NetworksPor fecha de publicaciónAutoresTítulosPalabras claveTipos de contenido

Mi cuenta

Acceder

Estadísticas

Ver Estadísticas de uso

Difusión

emailContacto person Directorio wifi Eduroam rss_feed Noticias
Iniciativa IMDEA Sobre IMDEA Networks Organización Memorias anuales Transparencia
Síguenos en:
Comunidad de Madrid

UNIÓN EUROPEA

Fondo Social Europeo

UNIÓN EUROPEA

Fondo Europeo de Desarrollo Regional

UNIÓN EUROPEA

Fondos Estructurales y de Inversión Europeos

© 2021 IMDEA Networks. | Declaración de accesibilidad | Política de Privacidad | Aviso legal | Política de Cookies - Valoramos su privacidad: ¡este sitio no utiliza cookies!