Recursive Gaussian process: On-line regression and learning

MF Huber - Pattern Recognition Letters, 2014 - Elsevier
Two approaches for on-line Gaussian process regression with low computational and
memory demands are proposed. The first approach assumes known hyperparameters and …

Random hypersurface models for extended object tracking

M Baum, UD Hanebeck - 2009 IEEE International Symposium …, 2009 - ieeexplore.ieee.org
Target tracking algorithms usually assume that the received measurements stem from a
point source. However, in many scenarios this assumption is not feasible so that …

[HTML][HTML] A novel technique for dental radiographic image segmentation based on neutrosophic logic

S Datta, N Chaki, B Modak - Decision Analytics Journal, 2023 - Elsevier
Oral diseases are very prevalent worldwide and affect people of all ages. Dentists depend
on x-rays to study the characteristics of oral diseases. The segmentation and analysis of …

Cooperative localization by dual foot-mounted inertial sensors and inter-agent ranging

JO Nilsson, D Zachariah, I Skog, P Händel - EURASIP Journal on …, 2013 - Springer
The implementation challenges of cooperative localization by dual foot-mounted inertial
sensors and inter-agent ranging are discussed, and work on the subject is reviewed. System …

On computational complexity reduction methods for Kalman filter extensions

M Raitoharju, R Piché - IEEE Aerospace and Electronic …, 2019 - ieeexplore.ieee.org
The Kalman filter and its extensions are used in a vast number of aerospace and navigation
applications for nonlinear state estimation of time series. In the literature, different …

S2KF: The Smart Sampling Kalman Filter

J Steinbring, UD Hanebeck - Proceedings of the 16th …, 2013 - ieeexplore.ieee.org
An accurate Linear Regression Kalman Filter (LRKF) for nonlinear systems called Smart
Sampling Kalman Filter (S 2 KF) is introduced. It is based on a new low-discrepancy Dirac …

Progressive Gaussian filtering using explicit likelihoods

J Steinbring, UD Hanebeck - 17th International Conference on …, 2014 - ieeexplore.ieee.org
In this paper, we introduce a new sample-based Gaussian filter. In contrast to the popular
Nonlinear Kalman Filters, eg, the UKF, we do not rely on linearizing the measurement …

[PDF][PDF] LRKF revisited: The smart sampling Kalman filter (S2KF)

J Steinbring, UD Hanebeck - … of Advances in …, 2014 - confcats_isif.s3.amazonaws.com
We consider estimating the hidden state of a discretetime stochastic nonlinear dynamic
system based on noisy measurements through Bayesian inference. This is an important …

PGF 42: Progressive Gaussian filtering with a twist

UD Hanebeck - … of the 16th International Conference on …, 2013 - ieeexplore.ieee.org
A new Gaussian filter for estimating the state of nonlinear systems is derived that relies on
two main ingredients: i) the progressive inclusion of the measurement information and ii) a …

FEPVNet: A network with adaptive strategies for cross-scale mapping of photovoltaic panels from multi-source images

B Su, X Du, H Mu, C Xu, X Li, F Chen, X Luo - Remote Sensing, 2023 - mdpi.com
The world is transitioning to renewable energy, with photovoltaic (PV) solar power being one
of the most promising energy sources. Large-scale PV mapping provides the most up-to …