In images collected by astronomical surveys, stars and galaxies often overlap visually. Deblending is the task of distinguishing and characterizing individual light sources in survey images. We propose StarNet, a Bayesian method to deblend sources in astronomical images of crowded star fields. StarNet leverages recent advances in variational inference, including amortized variational distributions and an optimization objective targeting an expectation of the forward KL divergence. In our experiments with SDSS images of the M2 globular cluster, StarNet is substantially more accurate than two competing methods: Probabilistic Cataloging (PCAT), a method that uses MCMC for inference, and DAOPHOT, a software pipeline employed by SDSS for deblending. In addition, the amortized approach to inference gives StarNet the scaling characteristics necessary to perform Bayesian inference on modern astronomical surveys.
翻译:在由天文测量收集的图像中,恒星和星系往往以视觉方式重叠。在测量图像中,区分和定性单个光源的任务就是进行分辨。我们提议StarNet,这是Bayesian在拥挤星域的天文图像中分解源的方法。StarNet利用最近变异推导的进展,包括摊销变异分布和针对远方KL差异预期的优化目标。在对M2星块SDSS图像的实验中,StarNet比两种相互竞争的方法要精确得多:预测性编目法,一种是用MCMCC进行推断的方法;DAOPHOT,一种是SDDSS用于分流的软件管道。此外,对推导法的分解法使StarNet具有必要的缩放特征,以便在现代天文测量中进行Bayesian的推断。</s>