Data uncertainty plays an important role in the field of geodesy. Even though deep learning is becoming increasingly important for geodetic applications due to its high accuracy, it typically does not consider the data uncertainty. As we demonstrate in this study, we propose to include the uncertainty of data in deep neural network architectures to achieve a better generalization. This is advantageous for big data applications as well as for small datasets. Inspired by weighted and total least squares, we formulate the problem for both input and target uncertainties, and combine it with the Bayesian learning method. This results in a new form of the loss function in machine learning. As an alternative approach, we consider data uncertaintie...
202205 bckwAccepted ManuscriptOthersResearch Institute for Sustainable Urban Development, Hong Kong ...
We present a simple yet efficient supervised machine learning algorithm that is designed for the GNS...
Graph neural networks are a newly established category of machine learning algorithms dealing with r...
We propose the use of a Deep Learning (DL) algorithm for the real-time inversion of electromagnetic ...
Global navigation satellite system (GNSS) site coordinate time series provides essential data for ge...
The goal of classical geodetic data analysis is often to estimate distributional parameters like exp...
Modeling and monitoring of earths processes through physical models and satellite observations at hi...
Over the past decade, neural networks (NNs) have been successfully applied to earth observation (EO...
The Earth Orientation Parameters (EOP) are fundamentals of geodesy, connecting the terrestrial and c...
Thesis (Ph.D.)--University of Washington, 2023Geospatial data refers to data associated with a speci...
Precise orbit determination is vital for the increasingly vast number of space objects around the Ea...
We investigate the accuracy of conventional machine learning aided algorithms for the prediction of ...
International audienceThis work presents a new approach for detection and exclusion (or de-weighting...
Global navigation satellite systems (GNSS) provide globally distributed station coordinate time seri...
This paper is aimed at the problem of predicting the land subsidence or upheave in an area, using GN...
202205 bckwAccepted ManuscriptOthersResearch Institute for Sustainable Urban Development, Hong Kong ...
We present a simple yet efficient supervised machine learning algorithm that is designed for the GNS...
Graph neural networks are a newly established category of machine learning algorithms dealing with r...
We propose the use of a Deep Learning (DL) algorithm for the real-time inversion of electromagnetic ...
Global navigation satellite system (GNSS) site coordinate time series provides essential data for ge...
The goal of classical geodetic data analysis is often to estimate distributional parameters like exp...
Modeling and monitoring of earths processes through physical models and satellite observations at hi...
Over the past decade, neural networks (NNs) have been successfully applied to earth observation (EO...
The Earth Orientation Parameters (EOP) are fundamentals of geodesy, connecting the terrestrial and c...
Thesis (Ph.D.)--University of Washington, 2023Geospatial data refers to data associated with a speci...
Precise orbit determination is vital for the increasingly vast number of space objects around the Ea...
We investigate the accuracy of conventional machine learning aided algorithms for the prediction of ...
International audienceThis work presents a new approach for detection and exclusion (or de-weighting...
Global navigation satellite systems (GNSS) provide globally distributed station coordinate time seri...
This paper is aimed at the problem of predicting the land subsidence or upheave in an area, using GN...
202205 bckwAccepted ManuscriptOthersResearch Institute for Sustainable Urban Development, Hong Kong ...
We present a simple yet efficient supervised machine learning algorithm that is designed for the GNS...
Graph neural networks are a newly established category of machine learning algorithms dealing with r...