This thesis presents a method based on neural networks and Kalman filters for estimating the position of a person carrying a mobile device (i.e., cell phone or tablet) that can communicate with static UWB sensors or is carried in an environment with known landmark positions. This device is used to collect and share inertial measurement unit (IMU) information — which includes data from sensors such as accelerometers, gyroscopes, and magnetometers — and UWB and landmark information. The collected data, in combination with other necessary initial condition information, is input into a pre-trained deep neural network (DNN) which predicts the movement of the person. The prediction result is then periodically — based on outside measurement availa...
Nowadays the incredible grow of mobile devices market led to the need for location-aware applicatio...
In modern radio networks with large antenna arrays and precise beamforming techniques, accurate user...
The objective of this thesis is to explore the improvements achieved through using classical filteri...
Inertial measurement units (IMUs) have emerged as an essential component in many of today's indoor n...
In this work, we developed a precision positioning algorithm for multi-constellation dual-frequency ...
Data-driven inertial navigation is the task of estimating of positions and orientations of a moving ...
An algorithm for indoor localization of pedestrians using an improved Inertial Navigation system is ...
Deep Neural Networks (DNNs) are a promising tool for Global Navigation Satellite System (GNSS) posit...
Localization accuracy obtainable from global navigation satellites systems in built up areas like u...
A pedestrian inertial navigation system is typically used to suppress the Global Navigation Satellit...
A comparison of neural network, state augmentation, and multiple model-based approaches to online lo...
Telematics box (T-Box) chip-level Global Navigation Satellite System (GNSS) receiver modules usually...
The number of GPS-enabled devices are growing rapidly. A large segment of the growth is coupled to t...
Personal positioning is a challenging topic in the area of navigation mainly because of the cost, si...
Many smartphone applications use inertial measurement units (IMUs) to sense movement, but the use of...
Nowadays the incredible grow of mobile devices market led to the need for location-aware applicatio...
In modern radio networks with large antenna arrays and precise beamforming techniques, accurate user...
The objective of this thesis is to explore the improvements achieved through using classical filteri...
Inertial measurement units (IMUs) have emerged as an essential component in many of today's indoor n...
In this work, we developed a precision positioning algorithm for multi-constellation dual-frequency ...
Data-driven inertial navigation is the task of estimating of positions and orientations of a moving ...
An algorithm for indoor localization of pedestrians using an improved Inertial Navigation system is ...
Deep Neural Networks (DNNs) are a promising tool for Global Navigation Satellite System (GNSS) posit...
Localization accuracy obtainable from global navigation satellites systems in built up areas like u...
A pedestrian inertial navigation system is typically used to suppress the Global Navigation Satellit...
A comparison of neural network, state augmentation, and multiple model-based approaches to online lo...
Telematics box (T-Box) chip-level Global Navigation Satellite System (GNSS) receiver modules usually...
The number of GPS-enabled devices are growing rapidly. A large segment of the growth is coupled to t...
Personal positioning is a challenging topic in the area of navigation mainly because of the cost, si...
Many smartphone applications use inertial measurement units (IMUs) to sense movement, but the use of...
Nowadays the incredible grow of mobile devices market led to the need for location-aware applicatio...
In modern radio networks with large antenna arrays and precise beamforming techniques, accurate user...
The objective of this thesis is to explore the improvements achieved through using classical filteri...