Rectification for Image Stitching with Deformable Meshes and Residual Networks
Yingbo Fan,
Shanjun Mao,
Li Mei
et al.
Abstract:Image stitching is a crucial aspect of image processing. However, factors like perspective and environment often lead to irregular shapes in stitched images. Cropping or completion methods typically result in substantial loss of information. This paper proposes a method for rectifying irregularly images into rectangles using deformable meshes and residual networks. The method utilizes a convolutional neural network to quantify rigid structures of images. Choosing the most suitable mesh structure based on the e… Show more
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