A Comprehensive Overview of Fish-Eye Camera Distortion Correction Methods
- URL: http://arxiv.org/abs/2401.00442v2
- Date: Mon, 13 May 2024 15:18:57 GMT
- Title: A Comprehensive Overview of Fish-Eye Camera Distortion Correction Methods
- Authors: Jian Xu, De-Wei Han, Kang Li, Jun-Jie Li, Zhao-Yuan Ma,
- Abstract summary: The fisheye camera suffers from significant distortion compared to pinhole cameras, resulting in distorted images of captured objects.
Fish-eye camera distortion is a common issue in digital image processing, requiring effective correction techniques to enhance image quality.
This review provides a comprehensive overview of various methods used for fish-eye camera distortion correction.
- Score: 15.82236496962726
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: The fisheye camera, with its unique wide field of view and other characteristics, has found extensive applications in various fields. However, the fisheye camera suffers from significant distortion compared to pinhole cameras, resulting in distorted images of captured objects. Fish-eye camera distortion is a common issue in digital image processing, requiring effective correction techniques to enhance image quality. This review provides a comprehensive overview of various methods used for fish-eye camera distortion correction. The article explores the polynomial distortion model, which utilizes polynomial functions to model and correct radial distortions. Additionally, alternative approaches such as panorama mapping, grid mapping, direct methods, and deep learning-based methods are discussed. The review highlights the advantages, limitations, and recent advancements of each method, enabling readers to make informed decisions based on their specific needs.
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