End-to-End Multi-Level Encoding Methods of Visual Data Compression for Robust Monocular Visual ORB-SLAM
Salih, M. Omar
Vásárhelyi, József
2025-08-07T07:48:10Z
2025-08-07T07:48:10Z
2025
1785-8860
hu_HU
http://hdl.handle.net/20.500.14044/32053
Simultaneous localization and mapping (SLAM) has been highly studied in the
last decade. It allows the estimation of the camera pose of a mobile device and the creation
of a map of the surrounding environment concurrently. Recently, Visual SLAM (VSLAM)
has become the most widely used state-of-the-art technique to implement SLAM tasks due
to its reduced cost, lower size, and affordability. However, the intensive computation of
VSLAM systems does not fit in a wide range of limited resources and energy mobile
devices. A possible solution is to split its functionality between mobile devices and the edge
cloud. This solution showed the necessity for efficient visual data compression methods to
be integrated within VSLAM systems. This work proposes a multi-level encoding method
for visual data frame compression integrated within the monocular Oriented FAST and
Rotated BRIEF-SLAM (ORB-SLAM) system. The performance results of the proposed
system are compared to corresponding ORB-SLAM systems adopting the most popular
classical still image compression standards; the Joint Photographic Experts Group (JPEG)
and the advanced version, the JPEG 2000, in terms of reconstruction quality, robot’s
trajectory estimation, and computational complexity.
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End-to-End Multi-Level Encoding Methods of Visual Data Compression for Robust Monocular Visual ORB-SLAM