Ceiling visual odometry for SLAM
SLAM implementation in an indoor environment relies on odometry reading. The motivation of the project is to explore the approach on Ceiling Visual Odometry. This report describes the process and methodology to obtain practical methods for Ceiling Visual Odometry. A consumer grade wide angle camera...
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sg-ntu-dr.10356-491592023-03-03T20:41:01Z Ceiling visual odometry for SLAM Chang, Poo Hee. Yong Chuen-Tze, Mark School of Computer Engineering Emerging Research Lab DRNTU::Engineering::Computer science and engineering::Computing methodologies::Image processing and computer vision SLAM implementation in an indoor environment relies on odometry reading. The motivation of the project is to explore the approach on Ceiling Visual Odometry. This report describes the process and methodology to obtain practical methods for Ceiling Visual Odometry. A consumer grade wide angle camera and depth sensor were used. Compared to conventional forward facing cameras common in visual odometry methods, the ceiling approach was less explored on. Ceiling visual odometry offers its advantages as it is less disturbed by dynamic environment, e.g. movement of people. It also simplify the scan matching dimension to one that only deal with rotation, affine transform without scale changes. Fourier-Mellin Transform, Optical flow and SURF were implemented and tested on the data sets. Accurate and fast computations were emphasized. The results obtained were shown to be encouraging. Bachelor of Engineering (Computer Engineering) 2012-05-15T06:20:56Z 2012-05-15T06:20:56Z 2012 2012 Final Year Project (FYP) http://hdl.handle.net/10356/49159 en Nanyang Technological University 62 p. application/pdf |
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DRNTU::Engineering::Computer science and engineering::Computing methodologies::Image processing and computer vision Chang, Poo Hee. Ceiling visual odometry for SLAM |
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SLAM implementation in an indoor environment relies on odometry reading. The motivation of the project is to explore the approach on Ceiling Visual Odometry. This report describes the process and methodology to obtain practical methods for Ceiling Visual Odometry. A consumer grade wide angle camera and depth sensor were used. Compared to conventional forward facing cameras common in visual odometry methods, the ceiling approach was less explored on. Ceiling visual odometry offers its advantages as it is less disturbed by dynamic environment, e.g. movement of people. It also simplify the scan matching dimension to one that only deal with rotation, affine transform without scale changes. Fourier-Mellin Transform, Optical flow and SURF were implemented and tested on the data sets. Accurate and fast computations were emphasized. The results obtained were shown to be encouraging. |
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Yong Chuen-Tze, Mark |
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Yong Chuen-Tze, Mark Chang, Poo Hee. |
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Final Year Project |
author |
Chang, Poo Hee. |
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Chang, Poo Hee. |
title |
Ceiling visual odometry for SLAM |
title_short |
Ceiling visual odometry for SLAM |
title_full |
Ceiling visual odometry for SLAM |
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Ceiling visual odometry for SLAM |
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Ceiling visual odometry for SLAM |
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ceiling visual odometry for slam |
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2012 |
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http://hdl.handle.net/10356/49159 |
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