Probabilistic Approaches to Robotic Perception

Probabilistic Approaches to Robotic Perception
Author :
Publisher : Springer
Total Pages : 259
Release :
ISBN-13 : 9783319020068
ISBN-10 : 3319020064
Rating : 4/5 (64 Downloads)

Book Synopsis Probabilistic Approaches to Robotic Perception by : João Filipe Ferreira

Download or read book Probabilistic Approaches to Robotic Perception written by João Filipe Ferreira and published by Springer. This book was released on 2013-08-30 with total page 259 pages. Available in PDF, EPUB and Kindle. Book excerpt: This book tries to address the following questions: How should the uncertainty and incompleteness inherent to sensing the environment be represented and modelled in a way that will increase the autonomy of a robot? How should a robotic system perceive, infer, decide and act efficiently? These are two of the challenging questions robotics community and robotic researchers have been facing. The development of robotic domain by the 1980s spurred the convergence of automation to autonomy, and the field of robotics has consequently converged towards the field of artificial intelligence (AI). Since the end of that decade, the general public’s imagination has been stimulated by high expectations on autonomy, where AI and robotics try to solve difficult cognitive problems through algorithms developed from either philosophical and anthropological conjectures or incomplete notions of cognitive reasoning. Many of these developments do not unveil even a few of the processes through which biological organisms solve these same problems with little energy and computing resources. The tangible results of this research tendency were many robotic devices demonstrating good performance, but only under well-defined and constrained environments. The adaptability to different and more complex scenarios was very limited. In this book, the application of Bayesian models and approaches are described in order to develop artificial cognitive systems that carry out complex tasks in real world environments, spurring the design of autonomous, intelligent and adaptive artificial systems, inherently dealing with uncertainty and the “irreducible incompleteness of models”.


Probabilistic Approaches to Robotic Perception Related Books

Probabilistic Approaches to Robotic Perception
Language: en
Pages: 259
Authors: João Filipe Ferreira
Categories: Technology & Engineering
Type: BOOK - Published: 2013-08-30 - Publisher: Springer

DOWNLOAD EBOOK

This book tries to address the following questions: How should the uncertainty and incompleteness inherent to sensing the environment be represented and modelle
Probabilistic Robotics
Language: en
Pages: 668
Authors: Sebastian Thrun
Categories: Technology & Engineering
Type: BOOK - Published: 2005-08-19 - Publisher: MIT Press

DOWNLOAD EBOOK

An introduction to the techniques and algorithms of the newest field in robotics. Probabilistic robotics is a new and growing area in robotics, concerned with p
Deep Learning for Robot Perception and Cognition
Language: en
Pages: 638
Authors: Alexandros Iosifidis
Categories: Technology & Engineering
Type: BOOK - Published: 2022-02-04 - Publisher: Academic Press

DOWNLOAD EBOOK

Deep Learning for Robot Perception and Cognition introduces a broad range of topics and methods in deep learning for robot perception and cognition together wit
Factor Graphs for Robot Perception
Language: en
Pages: 162
Authors: Frank Dellaert
Categories: Technology & Engineering
Type: BOOK - Published: 2017-08-15 - Publisher:

DOWNLOAD EBOOK

Reviews the use of factor graphs for the modeling and solving of large-scale inference problems in robotics. Factor graphs are introduced as an economical repre
Motion Planning in Dynamic Environments
Language: en
Pages: 190
Authors: Kikuo Fujimura
Categories: Computers
Type: BOOK - Published: 2012-12-06 - Publisher: Springer Science & Business Media

DOWNLOAD EBOOK

Computer Science Workbench is a monograph series which will provide you with an in-depth working knowledge of current developments in computer technology. Every