Image appearance based loop closure detecting method in monocular vision SLAM (simultaneous localization and mapping)

A closed-loop detection and monocular vision technology, applied in two-dimensional position/channel control, instrument, character and pattern recognition, etc., can solve the closed-loop detection requirements that cannot meet the efficiency and real-time of SLAM problems, and are prone to error closed-loop Detection, low accuracy and other issues

Inactive Publication Date: 2012-12-19
NANJING UNIV OF POSTS & TELECOMM
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Problems solved by technology

[0004] In terms of visual SLAM closed-loop detection, Angeli et al. proposed a topological closed-loop detection method based on enhanced vision, and Cummins et al. proposed a probabilistic closed-loop detection method based on topological appearance. Although these two methods are effective in large-scale environments, detection, but cannot meet the h

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  • Image appearance based loop closure detecting method in monocular vision SLAM (simultaneous localization and mapping)
  • Image appearance based loop closure detecting method in monocular vision SLAM (simultaneous localization and mapping)
  • Image appearance based loop closure detecting method in monocular vision SLAM (simultaneous localization and mapping)

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[0041] The technical scheme of the present invention is described in detail below in conjunction with accompanying drawing:

[0042] The closed-loop detection method based on image appearance in the monocular vision SLAM of the present invention, its basic process is as follows figure 1 shown, including the following steps:

[0043] Step 1. The mobile robot collects the current image with its own monocular camera, and extracts the visual bag-of-words feature of the current image.

[0044]In the BoVW image feature model (for details, please refer to [T. Botterill, S. Mill, R. Green. Bags-of-words-driven, single camera simultaneous localization and mapping. Journal of Field Robotics, 2011, 28 (2) :204-226]), a visual dictionary is built with a large number of image local visual feature vectors, and each local visual feature is used as a visual word in the visual dictionary. In this way, based on the created visual dictionary, any image can be used by visual The set of visual w...

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Abstract

The invention discloses an image appearance based loop closure detecting method in monocular vision SLAM (simultaneous localization and mapping). The image appearance based loop closure detecting method includes acquiring images of the current scene by a monocular camera carried by a mobile robot during advancing, and extracting characteristics of bag of visual words of the images of the current scene; preprocessing the images by details of measuring similarities of the images according to inner products of image weight vectors and rejecting the current image highly similar to a previous history image; updating posterior probability in a loop closure hypothetical state by a Bayesian filter process to carry out loop closure detection so as to judge whether the current image is subjected to loop closure or not; and verifying loop closure detection results obtained in the previous step by an image reverse retrieval process. Further, in a process of establishing a visual dictionary, the quantity of clustering categories is regulated dynamically according to TSC (tightness and separation criterion) values which serve as an evaluation criterion for clustering results. Compared with the prior art, the loop closure detecting method has the advantages of high instantaneity and detection precision.

Description

technical field [0001] The invention aims at the closed-loop detection problem in the monocular vision synchronous positioning and map construction (simultaneous localization and mapping, SLAM) of mobile robots, and provides a closed-loop detection method based on image appearance in monocular vision SLAM. The invention belongs to mobile robot navigation technology field. Background technique [0002] Synchronous positioning and map construction are basic issues and research hotspots in the field of mobile robot navigation. Whether the ability to synchronize positioning and map construction is considered by many people to be the key prerequisite for a robot to achieve autonomous navigation. In the SLAM process, the robot realizes self-localization and builds an environmental map at the same time. Due to the lack of prior knowledge and the uncertainty of the environment, the robot needs to judge whether the current position is in the environment area that has been visited dur...

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Application Information

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IPC IPC(8): G06K9/66G05D1/02
Inventor 梁志伟陈燕燕朱松豪徐国政
Owner NANJING UNIV OF POSTS & TELECOMM
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