Micro-Satellite Research Center, School of Aeronautics and Astronautics, Zhejiang University, Hangzhou 310027, China.
Sensors (Basel). 2022 Dec 2;22(23):9409. doi: 10.3390/s22239409.
Infrared Earth sensors with large-field-of-view (FOV) cameras are widely used in low-Earth-orbit satellites. To improve the accuracy and speed of Earth sensors, an algorithm based on modified random sample consensus (RANSAC) and weighted total least squares (WTLS) is proposed. Firstly, the modified RANSAC with a pre-verification step was used to remove the noisy points efficiently. Then, the Earth's oblateness was taken into consideration and the Earth's horizon was projected onto a unit sphere as a three-dimensional (3D) curve. Finally, the TLS and WTLS were used to fit the projection of the Earth horizon. With the help of TLS and WTLS, the accuracy of the Earth sensor was greatly improved. Simulated images and on-orbit infrared images obtained via the satellite Tianping-2B were used to assess the performance of the algorithm. The experimental results demonstrate that the method outperforms RANSAC, M-estimator sample consensus (MLESAC), and Hough transformation in terms of speed. The accuracy of the algorithm for nadir estimation is approximately 0.04° (root-mean-square error) when Earth is fully visible and 0.16° when the off-nadir angle is 120°, which is a significant improvement upon other nadir estimation algorithms.
具有大视场 (FOV) 相机的红外地球敏感器广泛应用于低地球轨道卫星中。为了提高地球敏感器的精度和速度,提出了一种基于改进随机抽样一致 (RANSAC) 和加权总体最小二乘 (WTLS) 的算法。首先,使用带有预验证步骤的改进 RANSAC 来有效地去除噪声点。然后,考虑地球的扁率,并将地球的地平线投影到单位球上作为三维 (3D) 曲线。最后,使用 TLS 和 WTLS 拟合地球地平线的投影。在 TLS 和 WTLS 的帮助下,地球敏感器的精度得到了很大的提高。通过卫星“天链二号”获取的模拟图像和在轨红外图像评估了算法的性能。实验结果表明,该方法在速度方面优于 RANSAC、M 估计样本一致 (MLESAC) 和霍夫变换。当地球完全可见时,算法对天底估计的精度约为 0.04°(均方根误差),当偏离天底角为 120°时,精度约为 0.16°,这比其他天底估计算法有显著的提高。