Camera-Agnostic Monocular SLAM and Semi-dense 3D Reconstruction
نویسندگان
چکیده
This paper discusses localisation and mapping techniques based on a single camera. After introducing the given problem, which is known as monocular SLAM, a new camera agnostic monocular SLAM system (CAM-SLAM) is presented. It was developed within the scope of this work and is inspired by recently proposed SLAM-methods. In contrast to most other systems, it supports any central camera model such as for omnidirectional cameras. Experiments show that CAM-SLAM features similar accuracy as state-of-the-art methods, while being considerably more flexible.
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