Huber M. Nonlinear Gaussian Filtering. Theory, Algorithms, and Applications 2015
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Huber M. Nonlinear Gaussian Filtering. Theory, Algorithms, and Applications 2015
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By restricting to Gaussian distributions, the optimal Bayesian filtering problem can be transformed into an algebraically simple form, which allows for computationally efficient algorithms. Three problem settings are discussed in this thesis: (1) filtering with Gaussians only, (2) Gaussian mixture filtering for strong nonlinearities, (3) Gaussian process filtering for purely data-driven scenarios. For each setting, efficient algorithms are derived and applied to real-world problems.
Background & Summary
Introduction
Nonlinear Bayesian Filtering
Dynamic Models and Measurement Models
Recursive Filtering
Closed-form Calculation
Approximate Filtering: State of the Art
Research Topics
Main Contributions
Gaussian Filtering
Gaussian Mixture Filtering
Gaussian Process Filtering
Thesis Outline
Gaussian Filtering
The Gaussian Distribution
Importance of the Gaussian
Dirac Delta Distribution
The Exponential Family
Exact Gaussian Filtering and Approximations
General Formulation
Linear Filtering
Linearized and Extended Kalman Filter
Statistical Linearization
Linear Regression Kalman Filters
Gaussian Smoothing
General Formulation
Linear Case
Nonlinear Case
Rao-Blackwellization
Contributions
Combining Rao-Blackwellization with Observed-Unobserved Decomposition
Semi-Analytical Filtering
Chebyshev Polynomial Kalman Filtering
Efficient Moment Propagation for Polynomials
Homotopic Moment Matching for Polynomial Measurement Models
Summary
Gaussian Mixture Filtering
Gaussian Mixtures
Nonlinear Filtering
Individual Approximation
Generic Gaussian Mixture Filter
Component Adaptation
Weight Optimization
Reduction
Refinement
Contributions
Semi-Analytic Gaussian Mixture Filter
Adaptive Gaussian Mixture Filter
Curvature-based Gaussian Mixture Reduction
Summary
Gaussian Process Filtering
Gaussian Processes
Covariance Functions
Examples
Hyperparameter Learning
Large Data Sets
Active Set Approaches
Local Approaches
Algebraic Tricks
Open Issues
Nonlinear Filtering
Contributions
Gaussian Process Filtering
Gaussian Process Smoothing
Recursive Gaussian Process Regression
On-line Hyperparameter Learning
Summary
Applications
Range-based Localization
Position Estimation
Position and Orientation Estimation
Gas Dispersion Source Estimation
Atmospheric Dispersion Models
Parameter Estimation
Active Object Recognition
Object Classification
Learning
Estimation
Planning
Summary
Concluding Remarks
Conclusions
Future Work
Particle Filtering
Perfect Monte Carlo Sampling
Importance Sampling
Sequential Importance Sampling
Choice of Importance Function
Resampling
Performance Measures
Root Mean Square Error
Mean Absolute Error
Normalized Estimation Error Square
Negative Log-Likelihood
Quadratic Programming
Bibliography
Publications
Gaussian Filtering using State Decomposition Methods
Semi-Analytic Gaussian Assumed Density Filter
Chebyshev Polynomial Kalman Filter
Gaussian Filtering for Polynomial Systems
(Semi-)Analytic Gaussian Mixture Filter
Adaptive Gaussian Mixture Filter
Superficial Gaussian Mixture Reduction
Analytic Moment-based Gaussian Process Filtering
Robust Filtering and Smoothing with Gaussian Processes
Recursive Gaussian Process Regression
Recursive Gaussian Process: On-line Regression and Learning
Optimal Stochastic Linearization for Range-Based Localization
Semi-Analytic Stochastic Linearization for Pose Tracking
On-line Dispersion Source Estimation
Bayesian Active Object Recognition