论文标题

深度学习的微透镜调查中的小行星检测

Towards Asteroid Detection in Microlensing Surveys with Deep Learning

论文作者

Cowan, Preeti, Bond, Ian A., Reyes, Napoleon H.

论文摘要

小行星是大多数天文学调查的不可磨灭的一部分,尽管只有几次调查专门用于检测。多年来,高节奏微透镜调查已积聚了几种数据,同时扫描主要是用于微透明事件的银河膨胀和麦哲伦云,因此为科学数据挖掘提供了很多机会。特别是,通过目视检查选定的图像可以观察到许多小行星。本文介绍了新型的基于深度学习的解决方案,用于在MOA项目收集的微透镜数据中恢复和发现小行星。通过在给定夜晚组合所有观测值,可以清楚地看到小行星轨迹,而这些曲目将为数据集的结构提供信息。在这些复合图像中确定了已知的小行星,并用于创建监督学习所需的标签数据集。开发了几种自定义CNN模型,以识别与小行星轨迹的图像。然后使用模型结合,以减少预测的差异以及改善概括误差,召回97.67%。此外,对Yolov4对象检测器进行了训练以定位小行星曲目,达到平均平均精度(MAP)为90.97%。这些经过训练的网络将应用于16年的MOA档案数据,以找到多年来调查已观察到的已知和未知小行星。开发的方法可以适用于其他调查以用于小行星恢复和发现。

Asteroids are an indelible part of most astronomical surveys though only a few surveys are dedicated to their detection. Over the years, high cadence microlensing surveys have amassed several terabytes of data while scanning primarily the Galactic Bulge and Magellanic Clouds for microlensing events and thus provide a treasure trove of opportunities for scientific data mining. In particular, numerous asteroids have been observed by visual inspection of selected images. This paper presents novel deep learning-based solutions for the recovery and discovery of asteroids in the microlensing data gathered by the MOA project. Asteroid tracklets can be clearly seen by combining all the observations on a given night and these tracklets inform the structure of the dataset. Known asteroids were identified within these composite images and used for creating the labelled datasets required for supervised learning. Several custom CNN models were developed to identify images with asteroid tracklets. Model ensembling was then employed to reduce the variance in the predictions as well as to improve the generalisation error, achieving a recall of 97.67%. Furthermore, the YOLOv4 object detector was trained to localize asteroid tracklets, achieving a mean Average Precision (mAP) of 90.97%. These trained networks will be applied to 16 years of MOA archival data to find both known and unknown asteroids that have been observed by the survey over the years. The methodologies developed can be adapted for use by other surveys for asteroid recovery and discovery.

扫码加入交流群

加入微信交流群

微信交流群二维码

扫码加入学术交流群,获取更多资源