Book contents
- Frontmatter
- Contents
- Preface for the First Edition
- Preface for the Second Edition
- Acronyms and Abbreviations
- Notation
- 1 Introduction
- Part I Estimation Machinery
- 2 Primer on Probability Theory
- 3 Linear-Gaussian Estimation
- 4 Nonlinear Non-Gaussian Estimation
- 5 Handling Nonidealities in Estimation
- 6 Variational Inference
- Part II Three-Dimensional Machinery
- Part III Applications
- Part IV Appendices
- References
- Index
5 - Handling Nonidealities in Estimation
from Part I - Estimation Machinery
Published online by Cambridge University Press: 11 January 2024
- Frontmatter
- Contents
- Preface for the First Edition
- Preface for the Second Edition
- Acronyms and Abbreviations
- Notation
- 1 Introduction
- Part I Estimation Machinery
- 2 Primer on Probability Theory
- 3 Linear-Gaussian Estimation
- 4 Nonlinear Non-Gaussian Estimation
- 5 Handling Nonidealities in Estimation
- 6 Variational Inference
- Part II Three-Dimensional Machinery
- Part III Applications
- Part IV Appendices
- References
- Index
Summary
Following on the heels of the chapter on nonlinear estimation, this chapter focusses on some of the common pitfalls and failure modes of estimation techniques. We begin by discussing some key properties that we would like healthy estimators to have (i.e., unbiased, consistent) and how to measure these properties. We delve more deeply into biases and discuss how in some cases we can fold bias estimation right into our estimator, while in other cases we cannot. We touch briefly on data association (matching measurements to the right parts of models) and how to mitigate the effect of outlier measurements using robust estimation. We close with some methods to determine good measurement covariances for use in our estimators.
- Type
- Chapter
- Information
- State Estimation for RoboticsSecond Edition, pp. 157 - 181Publisher: Cambridge University PressPrint publication year: 2024