4.7 Article

Image Stitching With Manifold Optimization

Journal

IEEE TRANSACTIONS ON MULTIMEDIA
Volume 25, Issue -, Pages 3469-3482

Publisher

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/TMM.2022.3161839

Keywords

Alignment; distortion; general linear group; image stitching; manifold

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This paper presents a manifold optimization method for image stitching by treating spatial transformations as elements of a prescribed matrix manifold. The proposed method computes spatially varying homographies for alignment and performs interpolation between homography and similarity transformation to mitigate distortion. Experimental results demonstrate that our method outperforms other methods for image stitching.
Image stitching usually relies on spatial transformations to perform the overlap alignment and distortion mitigation. This paper presents a manifold optimization method to seek these transformations. The purpose is not to present a new formulation of image stitching, as the proposed method uses common transformations such as homography to align feature correspondences in the overlap and similarity transformations to preserve the shape. Instead, the proposed method is based on a new treatment of these transformations as elements of a prescribed matrix manifold. Its advantage lies in its more effective and efficient optimization in the manifold domain. Specifically, spatially varying homographies are computed by an efficient second-order minimization (ESM) of the geometric error of aligning feature correspondences, but with their intrinsic manifold parameterization. To mitigate the distortion, the interpolation between homography and similarity transformation is performed on a general matrix manifold. These on-manifold operations improve the stitching quality with fewer ghosting and distortion artifacts. The experiments show our manifold optimization for image stitching outperforms other methods.

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