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Mini-SLAM: minimalistic visual SLAM in large-scale environments based on a new interpretation of image similarity

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conference contribution
posted on 2024-02-09, 17:54 authored by Achim Lilienthal, Henrik Andreasson, Tom Duckett
<p>This paper presents a vision-based approach to SLAM in large-scale environments with minimal sensing andcomputational requirements. The approach is based on a graphical representation of robot poses and links between the poses. Links between the robot poses are established based on odomety and image similarity, then a relaxation algorithm is used to generate a globally consistent map. To estimate the covariance matrix for links obtained from the vision sensor, a novel method is introduced based on the relative similarity of neighbouring images, without requiring distances to image features or multiple view geometry. Indoor and outdoor experiments demonstrate that the approach scales well to large-scale environments, producing topologically correct and geometrically accurate maps at minimal computational cost. Mini-SLAM was found to produce consistent maps in an unstructured, large-scale environment (the total path length was 1.4 km) containing indoor and outdoor passages.</p>

History

School affiliated with

  • School of Computer Science (Research Outputs)

Publisher

IEEE

ISSN

1050-4729

Date Submitted

2017-11-30

Date Accepted

2007-04-10

Date of First Publication

2007-04-10

Date of Final Publication

2007-04-10

Event Name

IEEE International Converence on Robotics and Automation (ICRA 2007)

Event Dates

10-14 April 2007

Date Document First Uploaded

2017-11-30

ePrints ID

29849

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