论文标题

快速的射频干扰的深度残留检测

Deep residual detection of radio frequency interference for FAST

论文作者

Yang, Zhicheng, Yu, Ce, Xiao, Jian, Zhang, Bo

论文摘要

射频干扰(RFI)检测和切除是五百米孔球形射电望远镜(FAST)的数据处理管道中的关键步骤。由于其高灵敏度和较高的数据速率,快速需要比其对应物更准确有效的RFI标记方法。在过去的几十年中,已经提出了基于人工智能(AI)的方法,例如使用卷积神经网络(CNN)的代码,以更可靠,有效地识别RFI。但是,使用此类方法对快速数据进行标记通常被证明是错误的,需要进一步的手动检查。此外,网络构建以及为有效的RFI标记的培训数据集准备了大量其他工作量。因此,使用现有算法实施的不同观察值的快速部署和调整AI方法是不切实际的。为了克服此类问题,我们提出了一个称为RFI-NET的模型。通过无需处理的原始数据输入,RFI-NET可以自动检测RFI,从而产生相应的掩码,而无需任何原始数据更改。使用模拟天文数据进行RFI-NET实验表明,我们的模型在精度和召回方面都优于现有方法。此外,与其他模型相比,我们的方法可以通过较少的培训数据获得相同的相对精度,从而减少准备训练数据集所需的精力和时间。此外,与其他CNN代码相比,RFI-NET的训练过程可以加速,过度贴合了。 RFI-NET的性能也通过Fast和Bleien天文台获得的观察数据进行了评估。我们的结果表明,RFI-NET具有精确透明的高精度面罩准确识别RFI的能力,而RFI无需进一步修改。

Radio frequency interference (RFI) detection and excision are key steps in the data-processing pipeline of the Five-hundred-meter Aperture Spherical radio Telescope (FAST). Because of its high sensitivity and large data rate, FAST requires more accurate and efficient RFI flagging methods than its counterparts. In the last decades, approaches based upon artificial intelligence (AI), such as codes using convolutional neural networks (CNNs), have been proposed to identify RFI more reliably and efficiently. However, RFI flagging of FAST data with such methods has often proved to be erroneous, with further manual inspections required. In addition, network construction as well as preparation of training data sets for effective RFI flagging has imposed significant additional workloads. Therefore, rapid deployment and adjustment of AI approaches for different observations is impractical to implement with existing algorithms. To overcome such problems, we propose a model called RFI-Net. With the input of raw data without any processing, RFI-Net can detect RFI automatically, producing corresponding masks without any alteration of the original data. Experiments with RFI-Net using simulated astronomical data show that our model has outperformed existing methods in terms of both precision and recall. Besides, compared with other models, our method can obtain the same relative accuracy with fewer training data, thus reducing the effort and time required to prepare the training data set. Further, the training process of RFI-Net can be accelerated, with overfittings being minimized, compared with other CNN codes. The performance of RFI-Net has also been evaluated with observing data obtained by FAST and the Bleien Observatory. Our results demonstrate the ability of RFI-Net to accurately identify RFI with fine-grained, high-precision masks that required no further modification.

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