Abstract

Previous camera calibration methods often use a checkerboard to capture images and estimate the camera parameters from the correspondences between images and the checkerboard. The corner points in the checkerboard images are used as useful features for correspondence matching. Therefore, it is essential to precisely find the corner points in the checkerboard images. In many previous works, the corner points are extracted assuming that the checkerboard images are not distorted by its lens. Instead, image blurring and Gaussian noise on the images are usually considered, but other cases are not dealt with. However, the captured checkerboard images are often corrupted by lens distortions and compression artifacts, which leads to performance degradation of corner point extraction. Moreover, the corner points are extracted individually in the previous methods without considering their geometric relations. To better handle the corner point extraction problem under lens distortions, in our corner point extraction optimization, the distorted locations of the pixels on checkerboard images are corrected with the camera parameters, and the structural constraints for checkerboard image grids are then applied under the line-to-line mapping. Also, to robustly find the blurred edges between corner points due to JPEG compression, an edge surface model is newly proposed that models the transitions with over- and under-shoots around the blurred edges. Extensive experimental results show that our method significantly outperforms the state-of-the-art method with average 88.3% and 54.3% reduction in RMSE for corner point reprojection and camera parameter estimation, respectively under compression and lens distortions for synthetic and real data.

Highlights

  • Calibration is the task of estimating the projection parameters of a camera

  • We propose a novel and elaborate corner point extraction method that incorporates the structural information under both lens distortion and compression artifacts, which leads to outperforming the previous corner point extraction methods with significant margins

  • We firstly propose a corner point extraction method that utilizes the structural information with the geometric property of the edges formed by the structures of the projected grids in the checkerboard images

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Summary

Introduction

Calibration is the task of estimating the projection parameters of a camera. Accurate camera parameter estimation is essential in the fields where 3D information is estimated from images, such as 3D reconstruction, virtual reality, and autonomous driving. For accurate results in the fields, precise camera calibration is required. The camera calibration techniques generally relate known target information to the camera parameters to find 2D-to-3D mapping which is a common issue in the fields of computer vision. The pattern on the boards usually consists only of black and white colors. Feature points are extracted on boundaries of black and white areas from the board images. By matching the feature points on the images to the board in the real world, the camera parameters are estimated [9].

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