大型天文表中低表面亮度星系的相似性搜索

Marcos Tidball, C. Furlanetto
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引用次数: 0

摘要

低表面亮度星系(LSBGs)构成了星系群的重要组成部分,然而,由于它们的弥漫性,它们的搜索是具有挑战性的。对LSBGs的探测通常是通过参数方法和目视检查相结合来完成的,这对于未来收集pb级数据的天文调查来说是不可行的。因此,在这项工作中,我们探索了在大型天文目录中使用位置敏感哈希方法进行lsdb近似相似性搜索。我们使用暗能量巡天Y3黄金编码目录中的11670190个天体,根据天体的属性创建了一个近似的k近邻模型,开发了一个工具,能够在只使用一个已知LSBG的情况下发现新的LSBG候选者。仅从一个标记的例子中,我们就能够找到各种已知的lsbg和许多视觉上类似但尚未编目的物体。此外,由于相似搜索模型的通用性,我们可以在不需要重新训练或生成大样本的情况下搜索和恢复其他稀有天体。我们的代码可以在https://github.com/zysymu/lsh-astro上找到。
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Similarity Search of Low Surface Brightness Galaxies in Large Astronomical Catalogs
Low Surface Brightness Galaxies (LSBGs) constitute an important segment of the galaxy population, however, due to their diffuse nature, their search is challenging. The detection of LSBGs is usually done with a combination of parametric methods and visual inspection, which becomes unfeasible for future astronomical surveys that will collect petabytes of data. Thus, in this work we explore the usage of Locality-Sensitive Hashing for the approximate similarity search of LSBGs in large astronomical catalogs. We use 11670190 objects from the Dark Energy Survey Y3 Gold coadd catalog to create an approximate k nearest neighbors model based on the properties of the objects, developing a tool able to find new LSBG candidates while using only one known LSBG. From just one labeled examplewe are able to find various known LSBGs and many objects visually similar to LSBGs but not yet catalogued. Also, due to the generality of similarity search models, we are able to search for and recover other rare astronomical objects without the need of retraining or generating a large sample. Our code is available on https://github.com/zysymu/lsh-astro.
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