Simultaneous Localization and Mapping (SLAM) has received quite a lot of attention in the last decades because of its relevance for many applications centered on a mobile observer, such as service robotics and intelligent transportation systems. This paper focuses on the use of recursive Bayesian filtering, as implemented by the Extendend Kalman Filter (EKF), to face the Visual SLAM problem, i.e., when using data from visual sources. In Monocular SLAM, which uses a single camera as unique source of information, it is not possible to directly estimate the depth of a feature from a single image. To handle the severely non-normal distribution representing such uncertainty, inverse parametrizations were developed, capable to deal with such uncertainty and still relying on Gaussian variables. In the paper, after an introduction to EKF-SLAM, we provide a review of different inverse parametrizations, and we introduce a novel proposal, the Framed Inverse Depth (FID) parametrization, which, in terms of consistency, performs similarly to state of the art Monocular SLAM parametrizations, but at a reduced computational cost. All these parametrizations can be used in a stereo and multi camera setting too. An extensive analysis is presented for both Monocular and stereo SLAM, for a simulated environment widely used in the literature as well as on a widely used real dataset.

Ceriani, S., Marzorati, D., Matteucci, M., Sorrenti, D. (2013). Single and Multi Camera Simultaneous Localization and Mapping Using the Extended Kalman Filter On the Different Parameterizations for 3D Point Features. JOURNAL OF MATHEMATICAL MODELLING AND ALGORITHMS, 13(1), 23-57 [10.1007/s10852-013-9219-7].

Single and Multi Camera Simultaneous Localization and Mapping Using the Extended Kalman Filter On the Different Parameterizations for 3D Point Features

CERIANI, SIMONE;MARZORATI, DANIELE;SORRENTI, DOMENICO GIORGIO
2013

Abstract

Simultaneous Localization and Mapping (SLAM) has received quite a lot of attention in the last decades because of its relevance for many applications centered on a mobile observer, such as service robotics and intelligent transportation systems. This paper focuses on the use of recursive Bayesian filtering, as implemented by the Extendend Kalman Filter (EKF), to face the Visual SLAM problem, i.e., when using data from visual sources. In Monocular SLAM, which uses a single camera as unique source of information, it is not possible to directly estimate the depth of a feature from a single image. To handle the severely non-normal distribution representing such uncertainty, inverse parametrizations were developed, capable to deal with such uncertainty and still relying on Gaussian variables. In the paper, after an introduction to EKF-SLAM, we provide a review of different inverse parametrizations, and we introduce a novel proposal, the Framed Inverse Depth (FID) parametrization, which, in terms of consistency, performs similarly to state of the art Monocular SLAM parametrizations, but at a reduced computational cost. All these parametrizations can be used in a stereo and multi camera setting too. An extensive analysis is presented for both Monocular and stereo SLAM, for a simulated environment widely used in the literature as well as on a widely used real dataset.
Articolo in rivista - Articolo scientifico
Simultaneous localization and mapping, Extended Kalman filter, Computer vision, Robotics
English
2013
13
1
23
57
none
Ceriani, S., Marzorati, D., Matteucci, M., Sorrenti, D. (2013). Single and Multi Camera Simultaneous Localization and Mapping Using the Extended Kalman Filter On the Different Parameterizations for 3D Point Features. JOURNAL OF MATHEMATICAL MODELLING AND ALGORITHMS, 13(1), 23-57 [10.1007/s10852-013-9219-7].
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/10281/42393
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