利用深度学习的光曲线反演小行星形状

IF 5.8 2区 物理与天体物理 Q1 ASTRONOMY & ASTROPHYSICS
YiJun Tang, ChenChen Ying, ChengZhe Xia, XiaoMing Zhang, XiaoJun Jiang
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引用次数: 0

摘要

上下文。利用光度数据反演小行星形状一直是行星科学和天文学研究的一个重要领域。具体来说,研究人员专注于开发从光曲线重建三维小行星形状的技术。这一过程对于深入了解小行星的形成和演化以及规划人类太空任务至关重要。然而,目前的小行星形状反演方法需要大量的迭代计算,使得该过程耗时且容易陷入局部最优。对于以近距离接近小行星为目标的任务,迫切需要一种更快、更有效的方法。本研究的目标是提高小行星形状反演的精度、速度和对稀疏数据的适应性,为空间任务中形状反演的自主决策提供支持。我们通过深度神经网络直接建立了光度数据与形状分布之间的映射关系。此外,我们使用三维点云来表示小行星的形状,并利用非凸小行星的光曲线与其凸壳之间的偏差来预测非凸小行星的凹区。通过我们的方法,我们消除了大量迭代计算的需要,实现了毫秒级的反演速度。我们比较了传统方法和我们的方法在不同形状模型中使用倒角距离的结果,发现我们的方法在处理特殊形状时表现得更好。对于凸壳上凹区域的检测,我们预测的交集比联合(IoU)达到0.89。我们利用洛厄尔天文台的观测数据进一步验证了该方法,预测了小行星3337 milosi和1289 Kutaïssi的凸形,并进行了光曲线拟合实验。实验结果证明了该方法的鲁棒性和适应性。提出了一种基于深度学习的小行星形状反演方法,利用光曲线数据重构小行星的凸壳,并预测非凸小行星的凸壳上的凹区域。我们的深度学习模型通过卷积和变压器网络有效地从输入数据中提取特征,学习嵌入在光曲线数据中的复杂照明关系,并能够精确估计代表小行星形状的三维点云。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Asteroid shape inversion with light curves using deep learning
Context. Asteroid shape inversion using photometric data has been a key area of study in planetary science and astronomical research. Specifically, researchers have focused on developing techniques to reconstruct 3D asteroid shapes from light curves. This process is crucial for gaining deeper insights into the formation and evolution of asteroids, as well as for planning human space missions. However, the current methods for asteroid shape inversion require extensive iterative calculations, making the process time-consuming and prone to becoming stuck in local optima. For missions that aim to make a close approach to an asteroid, a faster and more efficient method is urgently needed.Aims. The goals of this work are to improve the precision, speed, and adaptability to sparse data in asteroid shape inversion and to support autonomous decision-making for shape inversion in space missions.Methods. We directly established a mapping between photometric data and shape distribution through deep neural networks. In addition, we used 3D point clouds to represent asteroid shapes and utilized the deviation between the light curves of non-convex asteroids and their convex hulls to predict the concave areas of non-convex asteroids.Results. With our approach, we eliminate the need for extensive iterative calculations, achieving millisecond-level inversion speed. We compared the results of different shape models using the Chamfer distance between traditional methods and ours and found that our method performs better, especially when handling special shapes. For the detection of concave areas on the convex hull, the intersection over union (IoU) of our predictions reached 0.89. We further validated this method using observational data from the Lowell Observatory to predict the convex shapes of the asteroids 3337 Miloš and 1289 Kutaïssi, and we conducted light curve fitting experiments. The experimental results demonstrated the robustness and adaptability of the method.Conclusions. We propose a deep learning-based method for asteroid shape inversion using light curve data to reconstruct the convex hull of asteroids and predict concave areas on the convex hull of non-convex asteroids. Our deep learning model efficiently extracts features from input data through convolutional and transformer networks, learning the complex illumination relationships embedded in the light curve data, and enabling precise estimation of the three-dimensional point cloud representing asteroid shapes.
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来源期刊
Astronomy & Astrophysics
Astronomy & Astrophysics 地学天文-天文与天体物理
CiteScore
10.20
自引率
27.70%
发文量
2105
审稿时长
1-2 weeks
期刊介绍: Astronomy & Astrophysics is an international Journal that publishes papers on all aspects of astronomy and astrophysics (theoretical, observational, and instrumental) independently of the techniques used to obtain the results.
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