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Large-scale loop-closing with pictorial matching

Cheng Chen, Han Wang

Year
2006
Citations
7

Abstract

This paper presents a mapping method that can accurately map large environment with one single robot by visiting the environment for only once, and the resulting map can provide thorough 3D description for the environment in a predefined global coordinate. Our first contribution is to represent the map as a collection of submaps arranged in a deformable configuration, and to perform loop-closing by registering this submap configuration to an aerial image. The second contribution is to introduce the active contour technique to the SLAM domain, so that the registration is efficiently solved in an iterative energy minimization process. The constraints from robot mapping are modeled as forces trying to keep the submaps consistent to each other, while the pictorial matching is represented by forces guiding submaps to a globally consistent configuration. In the experiment, we demonstrate the proposed algorithm's capability to close a 1,890 meters with only one visiting. The result is compared with ground truth, and high accuracy is observed

Keywords

Computer scienceComputer visionClosing (real estate)Artificial intelligenceMatching (statistics)RobotProcess (computing)Domain (mathematical analysis)Energy minimizationScale (ratio)

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