Yin Wenxin, Zang Xizhe, Wu Lei, Zhang Xuehe, Zhao Jie
State Key Laboratory of Robotics and System, Harbin Institute of Technology, Harbin 150001, China.
Sensors (Basel). 2024 Apr 9;24(8):2406. doi: 10.3390/s24082406.
In the human-robot collaboration system, the high-precision distortion correction of the camera as an important sensor is a crucial prerequisite for accomplishing the task. The traditional correction process is to calculate the lens distortion with the camera model parameters or separately from the camera model. However, in the optimization process calculate with the camera model parameters, the mutual compensation between the parameters may lead to numerical instability, and the existing distortion correction methods separated from the camera model are difficult to ensure the accuracy of the correction. To address this problem, this study proposes a model-independent lens distortion correction method based on the image center area from the perspective of the actual camera lens distortion principle. The proposed method is based on the idea that the structured image preserves its ratios through perspective transformation, and uses the local image information in the central area of the image to correct the overall image. The experiments are verified from two cases of low distortion and high distortion under simulation and actual experiments. The experimental results show that the accuracy and stability of this method are better than other methods in training and testing results.
在人机协作系统中,作为重要传感器的相机进行高精度畸变校正,是完成任务的关键前提。传统的校正过程是利用相机模型参数或独立于相机模型来计算镜头畸变。然而,在利用相机模型参数进行计算的优化过程中,参数之间的相互补偿可能导致数值不稳定,而现有的独立于相机模型的畸变校正方法难以保证校正精度。为解决这一问题,本研究从实际相机镜头畸变原理的角度出发,提出了一种基于图像中心区域的与模型无关的镜头畸变校正方法。该方法基于结构化图像通过透视变换保持其比例关系的思想,利用图像中心区域的局部图像信息对整体图像进行校正。通过模拟和实际实验,从低畸变和高畸变两种情况对实验进行了验证。实验结果表明,该方法在训练和测试结果中的准确性和稳定性均优于其他方法。