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PROBABILISTIC CATALOGS FOR CROWDED STELLAR FIELDS

机译:拥挤恒星场的概率目录

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We present and implement a probabilistic (Bayesian) method for producing catalogs from images of stellar fields. The method is capable of inferring the number of sources N in the image and can also handle the challenges introduced by noise, overlapping sources, and an unknown point-spread function. The luminosity function of the stars can also be inferred, even when the precise luminosity of each star is uncertain, via the use of a hierarchical Bayesian model. The computational feasibility of the method is demonstrated on two simulated images with different numbers of stars. We find that our method successfully recovers the input parameter values along with principled uncertainties even when the field is crowded. We also compare our results with those obtained from the SExtractor software. While the two approaches largely agree about the fluxes of the bright stars, the Bayesian approach provides more accurate inferences about the faint stars and the number of stars, particularly in the crowded case.
机译:我们提出并实现一种概率(贝叶斯)方法,用于根据恒星场图像生成目录。该方法能够推断图像中的光源数量N,并且还可以应对噪声,重叠光源和未知点扩展功能带来的挑战。通过使用分层贝叶斯模型,即使每颗恒星的精确光度不确定,也可以推断出恒星的光度函数。在具有不同星数的两个模拟图像上证明了该方法的计算可行性。我们发现,即使现场拥挤,我们的方法也能成功恢复输入参数值以及原则上的不确定性。我们还将我们的结果与从SExtractor软件获得的结果进行比较。虽然这两种方法在很大程度上与明亮恒星的通量一致,但贝叶斯方法提供了关于微弱恒星和恒星数量的更准确推断,尤其是在拥挤的情况下。

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