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Proposal of a Geometric Calibration Method Using Sparse Recovery to Remove Linear Array Push-Broom Sensor Bias

机译:使用稀疏恢复消除线性阵列推扫式传感器偏置的几何校准方法的建议

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摘要

The rational function model (RFM) is widely used in the most advanced Earth observation satellites, replacing the rigorous imaging model. The RFM method achieves the desired calibration performance when image distortion is caused by long-period errors. However, the calibration performance of the RFM method deteriorates when short-period errors—such as attitude jitter error—are present, and the insufficient and uneven ground control points (GCPs) can also lower the calibration precision of the RFM method. Hence, this paper proposes a geometric calibration method using sparse recovery to remove the linear array push-broom sensor bias. The most important issue regarding this method is that the errors related to the imaging process are approximated to the equivalent bias angles. By using the sparse recovery method, the number and distribution of GCPs needed are greatly reduced. Meanwhile, the proposed method effectively removes short-period errors by recognizing periodic wavy patterns in the first step of the process. The image data from Earth Observing 1 (EO-1) and the Advanced Land Observing Satellite (ALOS) are used as experimental data for the verification of the calibration performance of the proposed method. The experimental results indicate that the proposed method is effective for the sensor calibration of both satellites.
机译:有理函数模型(RFM)广泛用于最先进的地球观测卫星,代替了严格的成像模型。当图像因长期​​误差而失真时,RFM方法可实现所需的校准性能。但是,当出现短时误差(例如姿态抖动误差)时,RFM方法的校准性能会下降,并且地面控制点(GCP)不足和不均匀也会降低RFM方法的校准精度。因此,本文提出了一种利用稀疏恢复来消除线性阵列推扫传感器偏差的几何标定方法。关于该方法的最重要的问题是与成像过程有关的误差近似于等效偏置角。通过使用稀疏恢复方法,所需的GCP数量和分布大大减少了。同时,该方法通过在过程的第一步中识别出周期性的波形模式,有效地消除了短期误差。来自地球观测1(EO-1)和高级陆地观测卫星(ALOS)的图像数据被用作实验数据,以验证所提出方法的校准性能。实验结果表明,该方法对两颗卫星的传感器标定都是有效的。

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