Nonparametric Bayesian Learning for Collaborative Robot Multimodal Introspection
Materialtyp:
ArtikelUtgivningsinformation: Springer Nature Springer Singapore [Imprint] 2020Beskrivning: 1 electronic resource (137 p.)Innehållstyp: - text
- computer
- online resource
- Mathematics and Science
- Mathematics
- Probability and statistics
- Bayesian inference
- Applied mathematics
- Mathematical modelling
- Technology, Engineering, Agriculture, Industrial processes
- Electronics and communications engineering
- Electronics engineering
- Automatic control engineering
- Robotics
- Computing and Information Technology
- Computer science
- Artificial intelligence
- Machine learning
- Agriculture
- Anomaly Monitoring and Diagnosis
- Anomaly Recovery
- Automatic control engineering
- Automation
- Bayesian Inference
- Bayesian inference
- Collaborative Robot Introspection
- Control
- Electronic devices & materials
- Engineering
- Hidden Markov Model
- Human-robot Collaboration
- Industrial processes
- Machine Learning
- Machine learning
- Mathematical Modeling and Industrial Mathematics
- Mathematical modelling
- Maths for engineers
- Mechatronics
- Multimodal Perception
- Nonparametric Bayesian Inference
- P Mathematics and Science
- PB Mathematics
- PBT Probability and statistics
- PBTB Bayesian inference
- PBW Applied mathematics
- PBWH Mathematical modelling
- Robot Autonomous Manipulation
- Robot Safety and Protection
- Robotic Engineering
- Robotics
- Robotics and Automation
- T Technology
- TJ Electronics and communications engineering
- TJF Electronics engineering
- TJFM Automatic control engineering
- TJFM1 Robotics
- U Computing and Information Technology
- UY Computer science
- UYQ Artificial intelligence
- UYQM Machine learning
- open access
- thema EDItEUR
Open Access Unrestricted online access star
This open access book focuses on robot introspection, which has a direct impact on physical human–robot interaction and long-term autonomy, and which can benefit from autonomous anomaly monitoring and diagnosis, as well as anomaly recovery strategies. In robotics, the ability to reason, solve their own anomalies and proactively enrich owned knowledge is a direct way to improve autonomous behaviors. To this end, the authors start by considering the underlying pattern of multimodal observation during robot manipulation, which can effectively be modeled as a parametric hidden Markov model (HMM). They then adopt a nonparametric Bayesian approach in defining a prior using the hierarchical Dirichlet process (HDP) on the standard HMM parameters, known as the Hierarchical Dirichlet Process Hidden Markov Model (HDP-HMM). The HDP-HMM can examine an HMM with an unbounded number of possible states and allows flexibility in the complexity of the learned model and the development of reliable and scalable variational inference methods. This book is a valuable reference resource for researchers and designers in the field of robot learning and multimodal perception, as well as for senior undergraduate and graduate university students.
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Creative Commons Licence cc by cc http://creativecommons.org/licenses/by/4.0/
eng
Freely available e-book