
Robust Estimation and Applications in Robotics
now publishers Inc
1st Edition
Published on 20. December 2016
Book
Paperback/Softback
58 pages
978-1-68083-214-3 (ISBN)
Description
Solving estimation problems is a fundamental component of numerous robotics applications. Prominent examples involve pose estimation, point cloud alignment, and object tracking. Algorithms for solving these estimation problems need to cope with new challenges due to an increased use of potentially poor low-cost sensors, and an ever growing deployment of robotic algorithms in consumer products, which operate in potentially unknown environments. These algorithms need to be capable of being robust against strong nonlinearities, high uncertainty levels, and numerous outliers. However, particularly in robotics, the Gaussian assumption is prevalent in solutions to multivariate parameter estimation problems without providing the desired level of robustness.
Robust Estimation and Applications in Robotics sets out to address the aforementioned challenges by providing an introduction to robust estimation with a particular focus on robotics. It starts by providing a concise overview of the theory of M-estimation. M-estimators share many of the convenient properties of least-squares estimators, and at the same time are much more robust to deviations from the Gaussian model assumption. It goes on to present several example applications where M-Estimation is used to increase robustness against nonlinearities and outliers.
Robust Estimation and Applications in Robotics is an ideal introduction to robust statistics that only requires preliminary knowledge of probability theory. It also includes examples of robotics applications where robust statistical tools make a difference.
Robust Estimation and Applications in Robotics sets out to address the aforementioned challenges by providing an introduction to robust estimation with a particular focus on robotics. It starts by providing a concise overview of the theory of M-estimation. M-estimators share many of the convenient properties of least-squares estimators, and at the same time are much more robust to deviations from the Gaussian model assumption. It goes on to present several example applications where M-Estimation is used to increase robustness against nonlinearities and outliers.
Robust Estimation and Applications in Robotics is an ideal introduction to robust statistics that only requires preliminary knowledge of probability theory. It also includes examples of robotics applications where robust statistical tools make a difference.
More details
Series
Language
English
Place of publication
Hanover
United States
Target group
College/higher education
Dimensions
Height: 234 mm
Width: 156 mm
Thickness: 3 mm
Weight
97 gr
ISBN-13
978-1-68083-214-3 (9781680832143)
DOI
10.1561/2300000047
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Schweitzer Classification
Content
1: Introduction 2: Literature Review / History 3: Basic Concepts 4: Theoretical Background on M-Estimation 5: Robust Estimation in Practice 6: Discussion and Further Reading. References.