基于双通道ResNet50的卫星姿态估计网络

Yujing Wang, Ruida Ye, Tian Zhang, Yue Zhao, Shenghua Zhou, Zhitao Wang
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引用次数: 0

摘要

在卫星位姿估计问题中,采用深度学习方法对网络进行训练。卫星姿态需要估计旋转(R)和平移(T),由于内部耦合相互作用,难以同时很好地估计。针对上述问题,提出了一种基于ResNet50的双通道卫星姿态估计网络,将卫星的旋转和平移解耦,有效避免了相互作用,并通过构建的网络分别估计卫星的平移和旋转,提高了卫星姿态的识别效果。通过实验验证,与其他方法相比,本文构建的网络模型对旋转和平移的估计效果更好。
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Satellite pose estimation network based on dual-channel ResNet50
In the satellite pose estimation problem, the deep learning method is used to train the network. The satellite pose needs to estimate the rotation (R) and translation (T), which are difficult to be well estimated simultaneously due to the internal coupling interaction. To solve the above problems, a dual-channel satellite pose estimation network based on ResNet50 is proposed to decouple the rotation and translation of satellite, effectively avoid the interaction, and estimate the translation and rotation of satellite respectively through the constructed network, which improves the recognition effect of satellite attitude. Through experimental verification, the network model constructed in this paper has better effect on the estimation of rotation and translation compared with other methods.
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