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Image stitching by line-guided local warping with global similarity constraint

机译:通过全球相似性约束的线引导当地翘曲的图像拼接

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摘要

Low-textured image stitching remains a challenging problem. It is difficult to achieve good alignment of images and it is easy to break images structures are often broken due to insufficient and unreliable point correspondences. Moreover, because of the viewpoint variations between multiple images, the stitched images suffer from projective distortions. To solve these problems, this paper presents a line-guided local warping method with a global similarity constraint for image stitching. Line features which serve well for geometric descriptions and scene constraints, are employed to guide image stitching accurately. On one hand, the line features are integrated into a local warping model through a designed weight function. On the other hand, line features are adopted to impose strong geometric constraints, including line correspondence and line colinearity, to improve the stitching performance through mesh optimization. To mitigate projective distortions, we adopt a global similarity constraint, which is integrated with the projective warps via a designed weight strategy. This constraint causes the final warp to slowly change from a projective to a similarity transformation across the image. Finally, the images undergo a two stage alignment scheme that provides accurate alignment and reduces projective distortion. We evaluate our method on a series of images and compare it with several other methods. The experimental results demonstrate that the proposed method provides a convincing stitching performance and that it outperforms other state-of-the-art methods. (C) 2018 Elsevier Ltd. All rights reserved.
机译:低纹理的图像拼接仍然是一个具有挑战性的问题。难以实现良好的图像对准,并且易于破坏图像结构通常由于不足和不可靠的点对应而被破坏。此外,由于多个图像之间的视点变化,缝合图像遭受投射失真。为了解决这些问题,本文介绍了一种带有全局相似性限制的线引导的本地翘曲方法,用于图像拼接。用于几何描述和场景约束的线特征用于准确指导图像缝合。一方面,线特征通过设计的重量函数集成到本地翘曲模型中。另一方面,采用线条特征来强加强大的几何约束,包括线对应和线路的性,以通过网格优化来改善拼接性能。为了缓解投影扭曲,我们采用全球相似度约束,通过设计的重量策略与投影扭曲集成。该约束导致最终扭曲从突出到图像上的相似性转换慢慢发生变化。最后,图像经历了两个阶段对齐方案,可提供准确的对齐并降低投影失真。我们在一系列图像上评估我们的方法,并将其与其他几种方法进行比较。实验结果表明,该方法提供了一种令人信服的缝合性能,并且它优于其他最先进的方法。 (c)2018年elestvier有限公司保留所有权利。

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