Spacecraft pose estimation plays a vital role in many on-orbit space missions, such as rendezvous and docking, debris removal, and on-orbit maintenance. At present, space images contain widely varying lighting conditions, high contrast and low resolution, pose estimation of space objects is more challenging than that of objects on earth. In this paper, we analyzing the radar image characteristics of spacecraft on-orbit, then propose a new deep learning neural Network structure named Dense Residual U-shaped Network (DR-U-Net) to extract image features. We further introduce a novel neural network based on DR-U-Net, namely Spacecraft U-shaped Network (SU-Net) to achieve end-to-end pose estimation for non-cooperative spacecraft. Specifically, the SU-Net first preprocess the image of non-cooperative spacecraft, then transfer learning was used for pre-training. Subsequently, in order to solve the problem of radar image blur and low ability of spacecraft contour recognition, we add residual connection and dense connection to the backbone network U-Net, and we named it DR-U-Net. In this way, the feature loss and the complexity of the model is reduced, and the degradation of deep neural network during training is avoided. Finally, a layer of feedforward neural network is used for pose estimation of non-cooperative spacecraft on-orbit. Experiments prove that the proposed method does not rely on the hand-made object specific features, and the model has robust robustness, and the calculation accuracy outperforms the state-of-the-art pose estimation methods. The absolute error is 0.1557 to 0.4491 , the mean error is about 0.302 , and the standard deviation is about 0.065 .
翻译:太空航天器的姿态估计对于几乎所有在轨空间任务,例如对接、碎片清除和在轨维修都起着至关重要的作用。目前,太空图像存在各种光照条件、对比度高低和低分辨率等问题,使得空间物体的姿态估计比地球上的物体更具挑战性。本文通过分析星载雷达图像的特征,提出了一种名为密集残差 U 型神经网络(DR-U-Net)的新深度学习神经网络结构,以提取图像特征。我们进一步提出了一种基于 DR-U-Net 的新型神经网络,称为太空机型 U 型网络(SU-Net),以实现非协作太空航天器的端到端姿态估计。具体地,SU-Net 首先对非协作太空航天器的图像进行预处理,然后采用迁移学习进行预训练。接着,为了解决星载雷达图像模糊和太空航天器轮廓识别能力低的问题,我们向 U-Net 基础网络添加了残差连接和密集连接,并将其命名为 DR-U-Net。通过这种方式,减少了特征的损失和模型的复杂性,避免了深度神经网络在训练过程中的退化。最后,利用一层前馈神经网络对非协作太空航天器进行姿态估计。实验证明,所提出的方法不依赖于手工制定的物体特定特性,具有强鲁棒性,计算精度优于最新的姿态估计方法。绝对误差在0.1557至0.4491之间,平均误差约为0.302,标准偏差约为0.065。