Indoor Positioning Prediction System Based on Wireless Networks and Depth Sensing Cameras

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Indoor Positioning Prediction System Based on Wireless Networks and Depth Sensing CamerasData
2016Cita bibliográfica
Duque Domingo, J., Cerrada, C., Valero, E. Indoor positioning prediction system based on wireless networks and depth sensing cameras. En Actas de las XXXVII Jornadas de Automática. 7, 8 y 9 de septiembre de 2016, Madrid (pp. 1237-1242). DOI capítulo: https://doi.org/10.17979/spudc.9788497498081.1237 DOI libro: https://doi.org/10.17979/spudc.9788497498081
Resumo
[Abstract] This work presents a new system for predicting the movement of people in indoor user environments, based on an advanced Indoor Positioning System (IPS) developed previously by the authors. The mentioned IPS proposes the combination of WiFi Positioning System (WPS) and depth maps provided by RGB-D cameras to improve the efficiency of existing methods, based uniquely on wireless positioning techniques. In this approach, the
prediction of movements is carried out by means of a proactive strategy, delivering the next estimated position of the person. This estimation provides a richer location and context information, which is useful for ubiquitous computing purposes. For example, energy consumption can be optimized if lighting or electronic devices are turned on/off by
means of the user trajectory prediction. This paper shows how several techniques, applied for the developed IPS, offer different solutions to the indoor prediction problem, and it discusses about which of them gives better results
Palabras chave
Positioning
WPS
RGB-D sensors
Kinect
WiFi
Fingerprint
Trajectory
Skeletons
Depth map
Movement prediction
Ubiquitous computing
WPS
RGB-D sensors
Kinect
WiFi
Fingerprint
Trajectory
Skeletons
Depth map
Movement prediction
Ubiquitous computing
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Atribución-NoComercial-CompartirIgual 4.0 Internacional
ISBN
978-84-617-4298-1 (UCM) 978-84-9749-808-1 (UDC electrónico)