The method of direct imaging has detected many exoplanets and made important contribution to the field of planet formation. The standard method employs angular differential imaging (ADI) technique, and more ADI image frames could lead to the results with larger signal-to-noise-ratio (SNR). However, it would need precious observational time from large telescopes, which are always over-subscribed. We thus explore the possibility to generate a converter which can increase the SNR derived from a smaller number of ADI frames. The machine learning technique with two-dimension convolutional neural network (2D-CNN) is tested here. Several 2D-CNN models are trained and their performances of denoising are presented and compared. It is found that our proposed Modified five-layer Wide Inference Network with the Residual learning technique and Batch normalization (MWIN5-RB) can give the best result. We conclude that this MWIN5-RB can be employed as a converter for future observational data.
翻译:直接成像方法已经检测到许多外行星,并对行星形成领域作出了重要贡献。标准方法采用角差成像技术,更多的ADI图像框架可以带来更大的信号到噪音拉皮(SNR)的结果。然而,它需要大型望远镜的宝贵观测时间,这些望远镜总是被过度使用。因此,我们探索了产生一个转换器的可能性,这种转换器能够增加从较少的ADI框架产生的SNR。在这里测试了带有两维相形共振神经网络的机器学习技术(2D-CNN)。一些2D-CNN模型经过培训,并展示和比较了它们进行分解的性能。我们发现,我们提议的与残余学习技术和Batch 正常化(MWIN5-RB)有关的五层宽光网络能够产生最佳结果。我们的结论是,MWIN5-RB可以用作未来观测数据的转换器。