2014
DOI: 10.4304/jsw.9.5.1281-1287
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A Novel Stratified Self-calibration Method of Camera Based on Rotation Movement

Abstract: This paper proposes a novel stratified selfcalibration method of camera based on rotation movement. The proposed method firstly captures more than three images of the same scene in the case of constant internal parameters by panning and rotating the camera with small relative rotation angles among the captured images. After feature extraction and matching of captured images, the pixel coordinates of feature point are normalized. Then the stratified self-calibration is performed, following projective, affine an… Show more

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Cited by 3 publications
(1 citation statement)
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“…This provided a solution for camera calibration in a large FOV without use of calibration objects, while the accuracy was not always guaranteed due to the low robustness in calculation. Active vision calibration refers to the use of known movements of the camera in camera calibration [8][9][10]. Although the calibration target is not required, it is expected the camera to be precisely controlled in motion, which potentially causes problems such as expensive devices and operational difficulties.…”
Section: Introductionmentioning
confidence: 99%
“…This provided a solution for camera calibration in a large FOV without use of calibration objects, while the accuracy was not always guaranteed due to the low robustness in calculation. Active vision calibration refers to the use of known movements of the camera in camera calibration [8][9][10]. Although the calibration target is not required, it is expected the camera to be precisely controlled in motion, which potentially causes problems such as expensive devices and operational difficulties.…”
Section: Introductionmentioning
confidence: 99%