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The Digitized Second Palomar Observatory Sky Survey (DPOSS). III. Star-Galaxy Separation

机译:第二次帕洛玛天文台数字化天空调查(DPOSS)。三,星系分离

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We discuss object classification for a multicolor survey of high-latitude fields from the Digitized Second Palomar Observatory Sky Survey (DPOSS) and the resulting Palomar-Norris Sky Catalog. Two methods are used to perform automated image classification for star-galaxy separation in DPOSS. As a source of classifier training/testing data, we employ an unprecedented 500 field collection of CCD photometry in the Thuan & Gunn gri system obtained with the Palomar 60 inch (1.5 m) telescope. We have trained artificial neural network (ANN) and decision tree (DT) image classifiers using images of ≈4000 galaxies and ≈3000 stars classified with FOCAS on 52 deep CCD images. We assess the systematic errors in our classifiers as a function of apparent magnitude. To model the loss of galaxies through misclassification and the contamination of our galaxy samples by misclassified stars, we compare the DPOSS ANN+DT image classifications with image data from 46 CCD fields on 21 POSS-II fields not used in the initial training/testing process. We assess these same functions in a more stringent manner by comparing classifications of DPOSS images common with different fields via the plate overlaps. These tests are combined to derive analytic descriptions of sample incompleteness and contamination for future use in our assessment of multicolor galaxy number counts and the two-point angular correlation function. Finally, we derive star and galaxy number counts from 341 DPOSS fields covering a total of 7756 deg2 in both the north and south Galactic hemispheres. These data are used to establish a final correction for stellar contamination in our galaxy samples and to demonstrate the level of classification homogeneity in the DPOSS g and r catalogs drawn from a wide range of Galactic latitudes.
机译:我们讨论了来自第二次帕洛玛天文台数字化天空观测(DPOSS)以及由此产生的帕洛玛诺里斯天空目录的高纬度地区多色测量的物体分类。在DPOSS中,有两种方法可以对星系和星系进行自动图像分类。作为分类器训练/测试数据的来源,我们在使用Palomar 60英寸(1.5 m)望远镜获得的Thuan&Gunn gri系统中采用了CCD光度测量的空前的500个采集。我们已经训练了人工神经网络(ANN)和决策树(DT)图像分类器,这些图像分类器使用FOCAS分类的≈4000个星系和≈3000个恒星在52张深CCD图像上。我们将分类器中的系统误差评估为表观幅度的函数。为了模拟由于分类错误造成的星系损失以及分类错误的恒星对我们的星系样本造成的污染,我们将DPOSS ANN + DT图像分类与21个POSS-II场中未使用初始训练/测试过程的46个CCD场的图像数据进行了比较。我们通过比较板重叠部分不同领域常见的DPOSS图像的分类,以更严格的方式评估了这些相同的功能。这些测试相结合,得出样品不完整和污染的分析描述,以供将来在我们评估多色星系数计数和两点角相关函数时使用。最后,我们从北半球和南半球的341个DPOSS场中获得了总数为7756 deg2的恒星和星系数计数。这些数据用于为我们的银河系样本中的恒星污染建立最终校正,并证明从广泛的银河纬度得出的DPOSS g和r目录中的分类均匀性水平。

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