Context. Blob detection is a common problem in astronomy. One example is in stellar population modelling, where the distribution of stellar ages and metallicities in a galaxy is inferred from observations. In this context, blobs may correspond to stars born in-situ versus those accreted from satellites, and the task of blob detection is to disentangle these components. A difficulty arises when the distributions come with significant uncertainties, as is the case for stellar population recoveries inferred from modelling spectra of unresolved stellar systems. There is currently no satisfactory method for blob detection with uncertainties. Aims. We introduce a method for uncertainty-aware blob detection developed in the context of stellar population modelling of integrated-light spectra of stellar systems. Methods. We develop theory and computational tools for an uncertainty-aware version of the classic Laplacian-of-Gaussians method for blob detection, which we call ULoG. This identifies significant blobs considering a variety of scales. As a prerequisite to apply ULoG to stellar population modelling, we introduce a method for efficient computation of uncertainties for spectral modelling. This method is based on the truncated Singular Value Decomposition and Markov Chain Monte Carlo sampling (SVD-MCMC). Results. We apply the methods to data of the star cluster M54. We show that the SVD-MCMC inferences match those from standard MCMC, but are a factor 5-10 faster to compute. We apply ULoG to the inferred M54 age/metallicity distributions, identifying between 2 or 3 significant, distinct populations amongst its stars.
翻译:球形探测是天文学中常见的一个问题。一个例子是星状人口建模,从观测中推断出星系恒星年龄和金属在星系中的分布。在这方面,球状探测可能与原生恒星与从卫星接收的恒星相对应,而球状探测的任务是分解这些组成部分。当球状探测出现显著的不确定性时,就会出现一个困难,例如从未解决星系建模光谱中推断出星状人口恢复速度快,目前没有令人满意的方法进行不确定的球状探测。目标。我们引入了一种在星状星系中生成的恒星与从恒星系中生成的星状星状星体模拟中生成的星状星体与从卫星上接收的星状光光谱。我们开发了一种理论和计算工具,用来分辨出典型的Laplacian-of-Gausistanus 方法,我们称之为ULOMMC。我们称之为ULOMC。这在考虑各种尺度的情况下,确定了显著的比值。作为将ULO-MMC 3号对星系人口进行模拟的一个先决条件,我们在SBLBS 的模型模型中,我们采用了一种数据测测测测测测方法。