Inertial odometry is a typical localization method that is widely and easily accessible in many devices. Pedestrian positioning can benefit from this approach based on inertial measurement unit (IMU) values embedded in smartphones. Fitting the inertial odometry outputs, namely step length and step heading of a human for instance, with spatial information is an ubiquitous way to correct for the cumulative noises. This so-called map-matching process can be achieved in several ways. In this paper, a novel real-time map-matching approach was developed, using a backtracking particle filter that benefits from the implemented geospatial analysis, which reduces the complexity of spatial queries and provides flexibility in the use of different kinds...
Commonly used Global Navigation Satellite Systems (GNSS) are inappropriate as Location Based Service...
This literature review aims to clarify what is known about map matching by using inertial senso...
This article focuses on human navigation, by proposing a system for mapping and self-localization ba...
The paper presents an algorithm for estimating a pedestrian location in an urban environment. The al...
Copyright © 2013 Mohamed Attia et al. This is an open access article distributed under the Creative ...
The work proposes a navigation system for pedestrian indoor localization. The system employs a casc...
ABSTRACT: To track human’s movements with high accuracy in certain areas, where GPS system is not av...
In this paper we describe a new Bayesian estimation approach for simultaneous mapping and localizat...
Localization in global navigation satellite system denied environments using inertial sensors alone,...
IPIN 2016, International conference on Indoor Positioning and Indoor Navigation, MADRID, ESPAGNE, 04...
Step counting-based dead-reckoning has been widely accepted as a cheap and effective solution for in...
Due to the constantly increasing technical advantages of mobile devices (such as smartphones), pedes...
This literature review aims to clarify what is known about map matching by using inert...
FootSLAM or simultaneous localisation and mapping (SLAM) for pedestrians is a technique that address...
Pedestrian positioning without receiving any GNSS signal or other reference signals as it might be t...
Commonly used Global Navigation Satellite Systems (GNSS) are inappropriate as Location Based Service...
This literature review aims to clarify what is known about map matching by using inertial senso...
This article focuses on human navigation, by proposing a system for mapping and self-localization ba...
The paper presents an algorithm for estimating a pedestrian location in an urban environment. The al...
Copyright © 2013 Mohamed Attia et al. This is an open access article distributed under the Creative ...
The work proposes a navigation system for pedestrian indoor localization. The system employs a casc...
ABSTRACT: To track human’s movements with high accuracy in certain areas, where GPS system is not av...
In this paper we describe a new Bayesian estimation approach for simultaneous mapping and localizat...
Localization in global navigation satellite system denied environments using inertial sensors alone,...
IPIN 2016, International conference on Indoor Positioning and Indoor Navigation, MADRID, ESPAGNE, 04...
Step counting-based dead-reckoning has been widely accepted as a cheap and effective solution for in...
Due to the constantly increasing technical advantages of mobile devices (such as smartphones), pedes...
This literature review aims to clarify what is known about map matching by using inert...
FootSLAM or simultaneous localisation and mapping (SLAM) for pedestrians is a technique that address...
Pedestrian positioning without receiving any GNSS signal or other reference signals as it might be t...
Commonly used Global Navigation Satellite Systems (GNSS) are inappropriate as Location Based Service...
This literature review aims to clarify what is known about map matching by using inertial senso...
This article focuses on human navigation, by proposing a system for mapping and self-localization ba...