The ability to discover new transients via image differencing without direct human intervention is an important task in observational astronomy. For these kind of image classification problems, machine Learning techniques such as Convolutional Neural Networks (CNNs) have shown remarkable success. In this work, we present the results of an automated transient identification on images with CNNs for an extant dataset from the Dark Energy Survey Supernova program (DES-SN), whose main focus was on using Type Ia supernovae for cosmology. By performing an architecture search of CNNs, we identify networks that efficiently select non-artifacts (e.g. supernovae, variable stars, AGN, etc.) from artifacts (image defects, mis-subtractions, etc.), achieving the efficiency of previous work performed with random Forests, without the need to expend any effort in feature identification. The CNNs also help us identify a subset of mislabeled images. Performing a relabeling of the images in this subset, the resulting classification with CNNs is significantly better than previous results.
翻译:在观测天文学中,通过图像差异发现新的瞬态是一个重要的任务。对于这些图像分类问题,机器学习技术,如进化神经网络(CNNs)已经表现出显著的成功。在这项工作中,我们展示了在有线电视新闻网的图像上自动瞬态识别结果,以便从暗能量调查超新星程序(DES-SN)中找到一个存续数据集,其主要重点是使用Ia型超新星进行宇宙学。通过对有线电视新闻网进行结构搜索,我们发现高效选择手工艺(如超新星、变异恒星、AGN等)的非艺术品的网络,从而实现以前在随机森林中完成的工作的效率,而无需花费任何精力进行特征识别。有线电视新闻网还帮助我们确定一组贴有误的图像。在这个子集中进行图像的重新标签,因此与CNN的分类比以往的结果要好得多。