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Proceedings Paper

Stitching image using RDHW based on multivariate student's t-distribution (Conference Presentation)
Author(s): Yingying Kong; Yingying Chen; Leung Henry

Paper Abstract

In order to create a seamless and seemingly natural panorama, we propose a novel stitching method when a panoramic scene contain two predominate planes. Firstly, compute each homography of per planes. Then, how to set the each of weight in dual-homography become an important step. The traditional method of setting weights is to directly calculate European distance between original image location pixel points and feature points. The disadvantage is the weights of singular points seriously impact the overall decision. In this paper, we proposed a static probability model of error matching to optimize weights by multivariate student’s t distribution. No only error matching probability, but also error amount and distance of feature points are all considered in the weight model. Finally, a renewal single homography is defined by establishing contact between dual-homography and weights. Experiments show the homography matrix is more robust and accurate to perform a nonlinear warping. The proposed method is easily generalized to multiple images, and allows one to automatically obtain the best perspective in the panorama.

Paper Details

Date Published: 14 May 2018
Proc. SPIE 10642, Degraded Environments: Sensing, Processing, and Display 2018, 106420W (14 May 2018); doi: 10.1117/12.2301394
Show Author Affiliations
Yingying Kong, Nanjing Univ. of Aeronautics and Astronautics (China)
Yingying Chen, Nanjing Univ. of Aeronautics and Astronautics (China)
Leung Henry, Univ. of Calgary (Canada)

Published in SPIE Proceedings Vol. 10642:
Degraded Environments: Sensing, Processing, and Display 2018
John (Jack) N. Sanders-Reed; Jarvis (Trey) J. Arthur III, Editor(s)

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