Vision-based SLAM system for MAVs in GPS-denied environments
Author(s) -
Sarquis Urzua,
Rodrigo Munguía,
Antoni Grau
Publication year - 2017
Publication title -
international journal of micro air vehicles
Language(s) - English
Resource type - Journals
eISSN - 1756-8307
pISSN - 1756-8293
DOI - 10.1177/1756829317705325
Subject(s) - computer vision , simultaneous localization and mapping , global positioning system , artificial intelligence , observability , computer science , context (archaeology) , monocular , monocular vision , payload (computing) , metric (unit) , real time computing , engineering , mobile robot , geography , robot , computer security , mathematics , telecommunications , operations management , archaeology , network packet
Using a camera, a micro aerial vehicle (MAV) can perform visual-based navigation in periods or circumstances when GPS is not available, or when it is partially available. In this context, the monocular simultaneous localization and mapping (SLAM) methods represent an excellent alternative, due to several limitations regarding to the design of the platform, mobility and payload capacity that impose considerable restrictions on the available computational and sensing resources of the MAV. However, the use of monocular vision introduces some technical difficulties as the impossibility of directly recovering the metric scale of the world. In this work, a novel monocular SLAM system with application to MAVs is proposed. The sensory input is taken from a monocular downward facing camera, an ultrasonic range finder and a barometer. The proposed method is based on the theoretical findings obtained from an observability analysis. Experimental results with real data confirm those theoretical findings and show that the proposed method is capable of providing good results with low-cost hardware.
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