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A brain-inspired SLAM system based on ORB features

Sun-Chun Zhou, Rui Yan, Jiaxin Li, Yingke Chen, Huajin Tang

发表年份
2017
引用次数
32
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摘要

This paper describes a brain-inspired simultaneous localization and mapping (SLAM) system using oriented features from accelerated segment test and rotated binary robust independent elementary (ORB) features of RGB (red, green, blue) sensor for a mobile robot. The core SLAM system, dubbed RatSLAM, can construct a cognitive map using information of raw odometry and visual scenes in the path traveled. Different from existing RatSLAM system which only uses a simple vector to represent features of visual image, in this paper, we employ an efficient and very fast descriptor method, called ORB, to extract features from RGB images. Experiments show that these features are suitable to recognize the sequences of familiar visual scenes. Thus, while loop closure errors are detected, the descriptive features will help to modify the pose estimation by driving loop closure and localization in a map correction algorithm. Efficiency and robustness of our method are also demonstrated by comparing with different visual processing algorithms.

关键词

Simultaneous localization and mappingArtificial intelligenceComputer visionComputer scienceRobustness (evolution)Orb (optics)RGB color modelVisual odometryMobile robotRobot

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