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Pushing the Limits of Exoplanet Discovery via Direct Imaging with Deep Learning

机译:通过直接成像和深度学习来突破系外行星发现的极限

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Further advances in exoplanet detection and characterisation require sampling a diverse population of extrasolar planets. One technique to detect these distant worlds is through the direct detection of their thermal emission. The so-called direct imaging technique, is suitable for observing young planets far from their star. These are very low signal-to-noise-ratio (SNR) measurements and limited ground truth hinders the use of supervised learning approaches. In this paper, we combine deep generative and discriminative models to bypass the issues arising when directly training on real data. We use a Generative Adversarial Network to obtain a suitable dataset for training Convolutional Neural Network classifiers to detect and locate planets across a wide range of SNRs. Tested on artificial data, our detectors exhibit good predictive performance and robustness across SNRs. To demonstrate the limits of the detectors, we provide maps of the precision and recall of the model per pixel of the input image. On real data, the models can re-confirm bright source detections.
机译:系外行星探测和表征的进一步发展要求对各种各样的太阳系外行星进行采样。检测这些遥远世界的一种技术是通过直接检测它们的热辐射。所谓的直接成像技术,适用于观测远离恒星的年轻行星。这些都是非常低的信噪比(SNR)测量,并且有限的地面真实性妨碍了监督学习方法的使用。在本文中,我们结合了深入的生成模型和判别模型,以绕过直接对真实数据进行训练时出现的问题。我们使用生成对抗网络来获取合适的数据集,以训练卷积神经网络分类器来检测和定位各种SNR范围内的行星。经过人工数据测试,我们的探测器在SNR范围内具有良好的预测性能和鲁棒性。为了说明检测器的局限性,我们提供了输入图每个像素的精度和模型召回率的图。在真实数据上,模型可以重新确认亮源检测。

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