Pixel-wise Deep Image Stitching
Hyeokjun Kweon, Hyeonseong Kim, Yoonsu Kang, Youngho Yoon, Wooseong, Jeong, Kuk-Jin Yoon

TL;DR
This paper introduces a deep learning-based image stitching method that uses pixel-wise warping to effectively handle large parallax, outperforming traditional homography-based approaches especially in complex scenes.
Contribution
The paper proposes a novel deep image stitching framework with pixel-wise warping and artifact elimination modules, addressing large parallax issues beyond traditional homography methods.
Findings
Qualitatively superior stitching results in large parallax scenarios.
Effective pixel-wise warping with optical flow improves alignment.
New large-scale dataset with ground truth warp for training and evaluation.
Abstract
Image stitching aims at stitching the images taken from different viewpoints into an image with a wider field of view. Existing methods warp the target image to the reference image using the estimated warp function, and a homography is one of the most commonly used warping functions. However, when images have large parallax due to non-planar scenes and translational motion of a camera, the homography cannot fully describe the mapping between two images. Existing approaches based on global or local homography estimation are not free from this problem and suffer from undesired artifacts due to parallax. In this paper, instead of relying on the homography-based warp, we propose a novel deep image stitching framework exploiting the pixel-wise warp field to handle the large-parallax problem. The proposed deep image stitching framework consists of two modules: Pixel-wise Warping Module (PWM)…
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Taxonomy
TopicsAdvanced Image and Video Retrieval Techniques · Advanced Vision and Imaging · Robotics and Sensor-Based Localization
