Temporal variations of apparent magnitude, called light curves, are observational statistics of interest captured by telescopes over long periods of time. Light curves afford the exploration of Space Domain Awareness (SDA) objectives such as object identification or pose estimation as latent variable inference problems. Ground-based observations from commercial off the shelf (COTS) cameras remain inexpensive compared to higher precision instruments, however, limited sensor availability combined with noisier observations can produce gappy time-series data that can be difficult to model. These external factors confound the automated exploitation of light curves, which makes light curve prediction and extrapolation a crucial problem for applications. Traditionally, image or time-series completion problems have been approached with diffusion-based or exemplar-based methods. More recently, Deep Neural Networks (DNNs) have become the tool of choice due to their empirical success at learning complex nonlinear embeddings. However, DNNs often require large training data that are not necessarily available when looking at unique features of a light curve of a single satellite. In this paper, we present a novel approach to predicting missing and future data points of light curves using Gaussian Processes (GPs). GPs are non-linear probabilistic models that infer posterior distributions over functions and naturally quantify uncertainty. However, the cubic scaling of GP inference and training is a major barrier to their adoption in applications. In particular, a single light curve can feature hundreds of thousands of observations, which is well beyond the practical realization limits of a conventional GP on a single machine. Consequently, we employ MuyGPs, a scalable framework for hyperparameter estimation of GP models that uses nearest neighbors sparsification and local cross-validation. MuyGPs...
翻译:光线曲线是望远镜在很长一段时间内所捕捉到的兴趣的观察性统计。光线曲线提供了探索空间域认识(SDA)目标(如物体识别或作为潜在的可变推论问题进行估算)的机会。从架子外商业(COTS)摄像头的地面观测比较高的精密仪器仍然便宜,然而,传感器的可用性有限,加上传声器观测,可能产生难以建模的时间序列数据缺口。这些外部因素混淆了光线曲线的自动利用,使光曲线预测和外推成为应用的关键问题。传统上,图像或时间序列的完成问题已经通过基于扩散或抽象推论的方法得到解决。最近,深神经网络(DNNF)由于在学习复杂的非线嵌嵌入器方面取得的成功经验而成为了首选工具。然而,DNNP往往需要大量的培训数据,而当看到单一卫星的光曲线的独特特征时,这些数据使得光曲线的预测和外推过程成为一个至关重要的问题。在本文中,我们提出了一种新的方法,在光线观测中,图像中的图像或时间序列序列的完成问题,使用主要GPLIPS 的曲线的直径直径直径模型,因此成为了。