Xin Shen
Adv. Artif. Intell. Mach. Learn., 3 (2):1176-1197
Xin Shen : Amazon.com
DOI: 10.54364/AAIML.2023.1169
Article History: Received on: 26-May-23, Accepted on: 21-Jun-23, Published on: 22-Jun-23
Corresponding Author: Xin Shen
Email: shenxin0126@gmail.com
Citation: Xin Shen, Kyungdon Joo, Jean Oh (2023). FishRecGAN: An End to End GAN Based Network for Fisheye Rectification and Calibration. Adv. Artif. Intell. Mach. Learn., 3 (2 ):1176-1197
We propose an end-to-end deep learning approach
to rectify fisheye images and simultaneously calibrate camera
intrinsic and distortion parameters. Our method consists of
two parts: a Quick Image Rectification Module developed with
a Pix2Pix GAN and Wasserstein GAN (W-Pix2PixGAN), and
a Calibration Module with a CNN architecture. Our Quick
Rectification Network performs robust rectification with good
resolution, making it suitable for constant calibration in camera based surveillance equipment. To achieve high-quality calibration,
we use the straightened output from the Quick Rectification
Module as a guidance-like semantic feature map for the Calibration Module to learn the geometric relationship between the
straightened feature and the distorted feature. We train and
validate our method with a large synthesized dataset labeled with
well-simulated parameters applied to a perspective image dataset.
Our solution has achieved robust performance in high-resolution
with a significant PSNR value of 22.343.