几何约束与环境增强融合的月面视觉位姿估计方法
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1北京交通大学计算机科学与技术学院信息科学研究所,北京 100044;2北京交通大学计算机科学与技术 学院视觉智能交叉创新教育部国际合作联合实验室,北京 100044;3北京航天飞行控制中心,北京 100094;4航天飞行动力学技术重点实验室,北京 100094

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通讯作者:

张淳杰,男,教授,博士生导师,E-mail: cjzhang@bjtu.edu.cn。

中图分类号:

TP391.41

基金项目:

国家自然科学基金(62476021);中央高校基本科研业务费(2025JBZX062)。


Lunar Visual Pose Estimation Method Combining Geometric Constraints and Environmental Enhancement
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1Institute of Information Science, School of Computer Science and Technology, Beijing Jiaotong University, Beijing 100044, China;2Visual Intelligence +X International Cooperation Joint Laboratory of MOE, School of Computer Science and Technology, Beijing Jiaotong University, Beijing 100044, China;3Beijing Aerospace Control Center, Beijing 100094, China;4Key Laboratory of Science and Technology on Aerospace Flight Dynamics, Beijing 100094, China

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    摘要:

    在月面采样任务中,由于采样机械臂采用细长柔性构型,其末端执行器的位姿呈现出较强的非线性特征与不确定性。为支撑快速、智能的采样作业,该任务引入视觉位姿估计技术提供实时准确的决策依据。然而,单目视觉固有的深度感知局限,叠加月表极端光影变化所导致的图像退化,对位姿估计的精度与稳健性构成了严峻挑战。针对上述问题,本文提出了几何约束位姿估计网络(Geometrically constrained pose estimation network, GCP-Net),该网络通过可微投影模块,将重投影误差与轮廓代数误差构建为损失项,建立图像语义与空间位姿间的一致性约束,有效提升了深度估计精度。同时,为模拟真实月表环境中极端遮挡与光照变化导致的图像退化,本文在GCP-Net的基础上引入随机噪声注入与特征掩码增强策略,提出增强型几何约束位姿估计网络(Enhanced geometrically constrained pose estimation network, EGCP-Net)。仿真实验表明,该方法在部分特征缺失条件下仍表现出良好的稳健性。经嫦娥六号公开报道图像数据验证,算法估计位姿的重投影结果与观测特征高度吻合,证明了该方法在航天工程任务中的可靠性与可行性。

    Abstract:

    In lunar sampling missions, the slender and flexible configuration of the robotic arm results in significant nonlinear characteristics and uncertainty in the end-effector’s pose. To support rapid and intelligent sampling operations, visual pose estimation technology is introduced to provide real-time and accurate decision-making support. However, the inherent depth perception limitations of monocular vision, compounded by image degradation caused by extreme lighting variations on the lunar surface, pose severe challenges to the accuracy and robustness of pose estimation. To address the aforementioned issues, this paper proposes the geometrically constrained pose estimation network (GCP-Net). By integrating a differentiable projection module, the network constructs the reprojection error and the contour algebraic error as additional loss terms, establishing a consistency constraint between image semantics and spatial pose, thereby effectively improving depth estimation accuracy. Simultaneously, to simulate image degradation caused by extreme occlusion and lighting changes in real lunar environments, this paper introduces stochastic noise injection and feature masking enhancement strategies based on GCP-Net, proposing an enhanced geometrically constrained pose estimation network (EGCP-Net). Simulation experiments demonstrate that the proposed method maintains good robustness even under conditions of partial feature loss. Validated by the publicly reported image data from Chang’e-6, the reprojection results of the pose estimated by the algorithm highly match the observed features, proving the reliability and feasibility of this method in aerospace engineering missions.

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段韶华,张淳杰,蒋晓寒,张作宇,胡晓东.几何约束与环境增强融合的月面视觉位姿估计方法[J].南京航空航天大学学报,2026,58(3):511-520

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  • 收稿日期:2026-03-24
  • 最后修改日期:2026-05-06
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  • 在线发布日期: 2026-06-18
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