| openaire: EC/H2020/777222/EU//ATTRACTThis paper studies a novel way to estimate the position of an object in an indoor environment, using the Channel State Information (CSI) that a Visible Light Communication (VLC) system collects to maintain the link-level connectivity. First, supervised learning is applied to characterize, the effect that an object in variable but known positions has on the received optical wireless signal. Second, the trained classifier is used to estimate the new unknown positions that the object may take, making use of the instantaneous CSI that is used to equalize the data-carrying signal samples in reception. The practical validation of the proposed positioning approach was done with the aid of a software-defined V...
This article presents a robust visible light localization (VLL) technique for wireless sensor networ...
In this paper, an improved channel model and estimation for positioning in indoor environments using...
This paper demonstrates the feasibility of using supervised learning algorithms to identify the pres...
This paper studies a novel way to estimate the position of an object in an indoor environment, using...
Visible light positioning (VLP) systems have experienced substantial revolutionary progress over the...
This paper focuses on designing and analysing a visible light based communication and positioning sy...
Abstract: High power white LEDs are expected to replace the existing lighting technologies in near f...
This paper introduces a novel model for positioning in a single channel or multiple input multiple o...
Visible Light Positioning (VLP) is a promising indoor localization technology for providing highly a...
In this paper a real-time Indoor Positioning System (IPS) based on Visible Light Communication (VLC)...
Localization based on visible light communication is rapidly attracting more attention as the adopti...
High power white LEDs are expected to replace the existing lighting technologies in near future whic...
Visible light communication (VLC) based on light-emitting diodes (LEDs) technology not only provides...
Until today, the existing technological solutions for accurate indoor positioning do not have a suff...
In this work, the use of Machine Learning methods for robust Received Signal Strength (RSS)-based Vi...
This article presents a robust visible light localization (VLL) technique for wireless sensor networ...
In this paper, an improved channel model and estimation for positioning in indoor environments using...
This paper demonstrates the feasibility of using supervised learning algorithms to identify the pres...
This paper studies a novel way to estimate the position of an object in an indoor environment, using...
Visible light positioning (VLP) systems have experienced substantial revolutionary progress over the...
This paper focuses on designing and analysing a visible light based communication and positioning sy...
Abstract: High power white LEDs are expected to replace the existing lighting technologies in near f...
This paper introduces a novel model for positioning in a single channel or multiple input multiple o...
Visible Light Positioning (VLP) is a promising indoor localization technology for providing highly a...
In this paper a real-time Indoor Positioning System (IPS) based on Visible Light Communication (VLC)...
Localization based on visible light communication is rapidly attracting more attention as the adopti...
High power white LEDs are expected to replace the existing lighting technologies in near future whic...
Visible light communication (VLC) based on light-emitting diodes (LEDs) technology not only provides...
Until today, the existing technological solutions for accurate indoor positioning do not have a suff...
In this work, the use of Machine Learning methods for robust Received Signal Strength (RSS)-based Vi...
This article presents a robust visible light localization (VLL) technique for wireless sensor networ...
In this paper, an improved channel model and estimation for positioning in indoor environments using...
This paper demonstrates the feasibility of using supervised learning algorithms to identify the pres...