skip to main content
Primo Search
Search in: Busca Geral

Activity Recognition Using Graphical Features from Smart Phone Sensor

Akter, Syeda S. ; Holder, Lawrence B. ; Cook, Diane J.

Internet of Things – ICIOT 2018, p.45-55 [Periódico revisado por pares]

Cham: Springer International Publishing

Sem texto completo

Citações Citado por
  • Título:
    Activity Recognition Using Graphical Features from Smart Phone Sensor
  • Autor: Akter, Syeda S. ; Holder, Lawrence B. ; Cook, Diane J.
  • Assuntos: Activity recognition ; GPS ; Graph mining ; Graphical features ; Sensor networks ; Smart phone sensors
  • É parte de: Internet of Things – ICIOT 2018, p.45-55
  • Descrição: We develop a graphical feature-based framework that collects data from different kinds of sensor networks, represents the sensor network data as a graph, extracts graphical features from the graph representation, and adds those features to a set of non-graphical features that are typical for the application. Our hypothesis is that the addition of a structural representation and transitional features will improve performance for the corresponding prediction tasks of different networks. We apply our graphical feature-based approach on smart phone GPS sensor data to predict activities performed by phone users. We represent the location category corresponding to each GPS value as a node and movement of users from one GPS location to another as an edge in graph. Then we extract graphical features such as existence of nodes and edges from the graph representation and add them to basic sensor data features coming from the smart phone. We find that using this augmented feature set improves activity recognition accuracy by 7.27% compared to using only basic non-graphical features with feature set augmented with existence of nodes performing the best.
  • Títulos relacionados: Lecture Notes in Computer Science
  • Editor: Cham: Springer International Publishing
  • Idioma: Inglês

Buscando em bases de dados remotas. Favor aguardar.