论文标题
浅透 - 深度学习II:使用深度学习确定红色噪声中的单个系外行星过渡
Shallow Transits -- Deep Learning II: Identify Individual Exoplanetary Transits in Red Noise using Deep Learning
论文作者
论文摘要
在上一篇论文中,我们引入了一个深度学习的神经网络,该网络应该能够在存在红噪声的情况下检测到非常浅的周期性跨性别的存在。该可行性研究中的网络将无法提供有关检测到的过渡的任何进一步的细节。当前的论文完成了此丢失的部分。我们提出了一个神经网络,该神经网络标记在过渡过程中获得的样品。这基本上类似于识别图像中每个像素的语义上下文的任务 - 图像中每个像素的语义上下文 - 计算机视觉中的重要任务,称为“语义分割”,通常由深神经网络执行。我们提出的神经网络利用了新的深度学习概念,例如U-NET,生成的对抗网络(GAN)和对抗性损失。由此产生的分割应允许对被标记为包含转移的光曲线进行进一步研究。这种对非常浅的转移的检测和研究的方法必定会在诸如柏拉图之类的未来太空过境调查中发挥重要作用,柏拉图旨在检测那些非常困难的长期浅层过渡案例。我们的分割网络还增加了不断增长的深度学习方法的工具箱,这些方法正在越来越多地用于系外行星,但到目前为止,主要用于审查过渡,而不是其初始检测。
In a previous paper, we have introduced a deep learning neural network that should be able to detect the existence of very shallow periodic planetary transits in the presence of red noise. The network in that feasibility study would not provide any further details about the detected transits. The current paper completes this missing part. We present a neural network that tags samples that were obtained during transits. This is essentially similar to the task of identifying the semantic context of each pixel in an image -- an important task in computer vision, called `semantic segmentation', which is often performed by deep neural networks. The neural network we present makes use of novel deep learning concepts such as U-Nets, Generative Adversarial Networks (GAN), and adversarial loss. The resulting segmentation should allow further studies of the light curves which are tagged as containing transits. This approach towards the detection and study of very shallow transits is bound to play a significant role in future space-based transit surveys such as PLATO, which are specifically aimed to detect those extremely difficult cases of long-period shallow transits. Our segmentation network also adds to the growing toolbox of deep learning approaches which are being increasingly used in the study of exoplanets, but so far mainly for vetting transits, rather than their initial detection.