Received Signal Strength (RSS) localization is widely used due to its simplicity and availability in most mobile devices. The RSS channel model is defined by the propagation losses and the shadow fading. These parameters might vary over time because of changes in the environment. In this paper, the problem of tracking a mobile node by RSS measurements is addressed, while simultaneously estimating a two-slope RSS model. The methodology considers a Kalman filter with Interacting Multiple Model architecture, coupled to an on-line estimation of the observation’s variance. The performance of the method is shown through numerical simulations in realistic scenarios.Peer Reviewe
Indoor tracking Indoor positioning a b s t r a c t In this paper we address the problem of indoor tr...
In this paper, a semi-parametric model for RSS measurements is introduced that can be used to predic...
In wireless sensor networks, knowing the location of the wireless sensors is critical in many remote...
Abstract—Received Signal Strength (RSS) localization is widely used due to its simplicity and availa...
Received Signal Strength (RSS) localization is widely used due to its simplicity and availability in...
Abstract—Received Signal Strength (RSS) for indoor loca-lization is widely used due to its simplicit...
Received Signal Strength (RSS) for indoor localization is widely used due to its simplicity and avai...
Received Signal Strength (RSS) for indoor localization is widely used due to its simplicity and avai...
Due to the vast increase in location-based services, currently there exists an actual need of robust...
This paper presents a recursive expectation maximization-like algorithm that can be used to simultan...
This paper presents a recursive expectation maximization-like algorithm that can be used to simultan...
This paper investigates the problem of estimating the location and velocity of a mobile agent using ...
[[abstract]]Mobile location tracking based on the received signal strength (RSS) is known to be easi...
AbstractThis paper presents a recursive expectation maximization-like algorithm that can be used to ...
Among the various ranging techniques, Radio Signal Strength (RSS) based approaches attract intensive...
Indoor tracking Indoor positioning a b s t r a c t In this paper we address the problem of indoor tr...
In this paper, a semi-parametric model for RSS measurements is introduced that can be used to predic...
In wireless sensor networks, knowing the location of the wireless sensors is critical in many remote...
Abstract—Received Signal Strength (RSS) localization is widely used due to its simplicity and availa...
Received Signal Strength (RSS) localization is widely used due to its simplicity and availability in...
Abstract—Received Signal Strength (RSS) for indoor loca-lization is widely used due to its simplicit...
Received Signal Strength (RSS) for indoor localization is widely used due to its simplicity and avai...
Received Signal Strength (RSS) for indoor localization is widely used due to its simplicity and avai...
Due to the vast increase in location-based services, currently there exists an actual need of robust...
This paper presents a recursive expectation maximization-like algorithm that can be used to simultan...
This paper presents a recursive expectation maximization-like algorithm that can be used to simultan...
This paper investigates the problem of estimating the location and velocity of a mobile agent using ...
[[abstract]]Mobile location tracking based on the received signal strength (RSS) is known to be easi...
AbstractThis paper presents a recursive expectation maximization-like algorithm that can be used to ...
Among the various ranging techniques, Radio Signal Strength (RSS) based approaches attract intensive...
Indoor tracking Indoor positioning a b s t r a c t In this paper we address the problem of indoor tr...
In this paper, a semi-parametric model for RSS measurements is introduced that can be used to predic...
In wireless sensor networks, knowing the location of the wireless sensors is critical in many remote...