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Parallax-Tolerant Image Stitching

CVPR(2014)

引用 443|浏览488
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摘要
Parallax handling is a challenging task for image stitching. This paper presents a local stitching method to handle parallax based on the observation that input images do not need to be perfectly aligned over the whole overlapping region for stitching. Instead, they only need to be aligned in a way that there exists a local region where they can be seamlessly blended together. We adopt a hybrid alignment model that combines homography and content-preserving warping to provide flexibility for handling parallax and avoiding objectionable local distortion. We then develop an efficient randomized algorithm to search for a homography, which, combined with content-preserving warping, allows for optimal stitching. We predict how well a homography enables plausible stitching by finding a plausible seam and using the seam cost as the quality metric. We develop a seam finding method that estimates a plausible seam from only roughly aligned images by considering both geometric alignment and image content. We then pre-align input images using the optimal homography and further use content-preserving warping to locally refine the alignment. We finally compose aligned images together using a standard seam-cutting algorithm and a multi-band blending algorithm. Our experiments show that our method can effectively stitch images with large parallax that are difficult for existing methods.
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关键词
seam-cutting algorithm,geometric alignment,image content,randomized algorithm,optimal homography,image segmentation,randomised algorithms,hybrid alignment model,parallax handling,parallax-tolerant image stitching,multiband blending algorithm,seam finding method,geometry,content-preserving warping,pipelines,computer vision,prediction algorithms,optimization
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