论文标题
在宽场小孔望远镜中使用深部神经网络的天文目标检测和分类
Detection and Classification of Astronomical Targets with Deep Neural Networks in Wide Field Small Aperture Telescopes
论文作者
论文摘要
宽场小光圈望远镜被广泛用于光学瞬态观测。在观察到的图像中对天文目标的检测和分类是最重要和最基本的步骤。在本文中,我们提出了一个基于深神经网络的天文目标检测和分类框架。我们的框架采用了更快的R-CNN的概念,并将修改后的Resnet-50用作骨干网络和功能金字塔网络,以从不同天文学目标的图像中提取特征。为了提高框架的概括能力,我们使用模拟和真实的观察图像来训练神经网络。训练后,神经网络可以自动检测和分类天文目标。我们通过模拟数据测试框架的性能,发现我们的框架具有与传统方法的明亮和孤立来源的检测能力相同,并且我们的框架对昏暗目标的检测能力更好,尽管传统方法检测到的所有天体对象都可以正确分类。我们还使用我们的框架处理真实的观察数据,并发现与传统方法相比,当我们的框架阈值为0.6时,我们的框架可以提高25%的检测能力。快速发现瞬态目标非常重要,我们进一步建议将我们的框架安装在嵌入式设备(例如Nvidia Jetson Xavier)中,以实现实时天文目标检测和分类能力。
Wide field small aperture telescopes are widely used for optical transient observations. Detection and classification of astronomical targets in observed images are the most important and basic step. In this paper, we propose an astronomical targets detection and classification framework based on deep neural networks. Our framework adopts the concept of the Faster R-CNN and uses a modified Resnet-50 as backbone network and a Feature Pyramid Network to extract features from images of different astronomical targets. To increase the generalization ability of our framework, we use both simulated and real observation images to train the neural network. After training, the neural network could detect and classify astronomical targets automatically. We test the performance of our framework with simulated data and find that our framework has almost the same detection ability as that of the traditional method for bright and isolated sources and our framework has 2 times better detection ability for dim targets, albeit all celestial objects detected by the traditional method can be classified correctly. We also use our framework to process real observation data and find that our framework can improve 25 % detection ability than that of the traditional method when the threshold of our framework is 0.6. Rapid discovery of transient targets is quite important and we further propose to install our framework in embedded devices such as the Nvidia Jetson Xavier to achieve real-time astronomical targets detection and classification abilities.