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Basic extended Kalman filter: simultaneous localisation and mapping

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dc.contributor.author Matsebe, O
dc.contributor.author Namoshe, M
dc.contributor.author Tlale, N
dc.date.accessioned 2010-09-15T11:05:27Z
dc.date.available 2010-09-15T11:05:27Z
dc.date.issued 2010
dc.identifier.citation Matsebe, O, Namoshe, M and Tlale, N. 2010. Basic extended Kalman filter: simultaneous localisation and mapping. Robot Localization and Map Building, Book edited by: Hanafiah Yussof, INTECH en
dc.identifier.isbn 978-953-7619-83-1
dc.identifier.uri http://hdl.handle.net/10204/4360
dc.description Book edited by: Hanafiah Yussof, Copyright: 2010 INTECH, en
dc.description.abstract The goal of the chapter is to provide an opportunity for researchers who are new to, or interested in, this exciting area of research with the basics, background information, major issues, and the state-of-the-art as well as future challenges in SLAM with a bent towards EKF-SLAM. It will also be helpful in realizing what methods are being employed and what sensors are being used. It presents the 2 – Dimensional (2D) feature based EKF-SLAM technique used for generating robot pose estimates together with positions of features in the robot’s operating environment, highlights some of the basics for successful EKF – SLAM implementation: (1) Process and observation models, these are the underlying models required, (2) EKF-SLAM Steps, the three-stage recursive EKF-SLAM process comprising prediction, observation and update steps, (3) Feature Extraction and Environment modelling, a process of extracting well defined entities or landmarks (features) which are recognisable and can be repeatedly detected to aid navigation, (4) Data Association, this consists of determining the origin of each measurement, in terms of map features, (5) Multi – Robot – EKF – SLAM, the two types of multi robot systems are described: Collaborative and Cooperative multi robot systems with more emphasis on the Cooperative SLAM Scheme. en
dc.language.iso en en
dc.publisher INTECH en
dc.subject Simultaneous localisation en
dc.subject Mapping en
dc.subject Extended Kalman filter en
dc.subject Sensors en
dc.subject Robot localization en
dc.subject Map building en
dc.title Basic extended Kalman filter: simultaneous localisation and mapping en
dc.type Book Chapter en
dc.identifier.apacitation Matsebe, O., Namoshe, M., & Tlale, N. (2010). Basic extended Kalman filter: Simultaneous localisation and mapping., <i></i> INTECH. http://hdl.handle.net/10204/4360 en_ZA
dc.identifier.chicagocitation Matsebe, O, M Namoshe, and N Tlale. "Basic extended Kalman filter: simultaneous localisation and mapping" In <i></i>, n.p.: INTECH. 2010. http://hdl.handle.net/10204/4360. en_ZA
dc.identifier.vancouvercitation Matsebe O, Namoshe M, Tlale N. Basic extended Kalman filter: simultaneous localisation and mapping. [place unknown]: INTECH; 2010. [cited yyyy month dd]. http://hdl.handle.net/10204/4360. en_ZA
dc.identifier.ris TY - Book Chapter AU - Matsebe, O AU - Namoshe, M AU - Tlale, N AB - The goal of the chapter is to provide an opportunity for researchers who are new to, or interested in, this exciting area of research with the basics, background information, major issues, and the state-of-the-art as well as future challenges in SLAM with a bent towards EKF-SLAM. It will also be helpful in realizing what methods are being employed and what sensors are being used. It presents the 2 – Dimensional (2D) feature based EKF-SLAM technique used for generating robot pose estimates together with positions of features in the robot’s operating environment, highlights some of the basics for successful EKF – SLAM implementation: (1) Process and observation models, these are the underlying models required, (2) EKF-SLAM Steps, the three-stage recursive EKF-SLAM process comprising prediction, observation and update steps, (3) Feature Extraction and Environment modelling, a process of extracting well defined entities or landmarks (features) which are recognisable and can be repeatedly detected to aid navigation, (4) Data Association, this consists of determining the origin of each measurement, in terms of map features, (5) Multi – Robot – EKF – SLAM, the two types of multi robot systems are described: Collaborative and Cooperative multi robot systems with more emphasis on the Cooperative SLAM Scheme. DA - 2010 DB - ResearchSpace DP - CSIR KW - Simultaneous localisation KW - Mapping KW - Extended Kalman filter KW - Sensors KW - Robot localization KW - Map building LK - https://researchspace.csir.co.za PY - 2010 SM - 978-953-7619-83-1 T1 - Basic extended Kalman filter: simultaneous localisation and mapping TI - Basic extended Kalman filter: simultaneous localisation and mapping UR - http://hdl.handle.net/10204/4360 ER - en_ZA


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