论文标题

具有生成对抗网络的全盘太阳能观察的图像质量评估

Image Quality Assessment for Full-Disk Solar Observations with Generative Adversarial Networks

论文作者

Jarolim, Robert, Veronig, Astrid, Pötzi, Werner, Podladchikova, Tatiana

论文摘要

为了确保一系列稳定的记录图像,具有足够的质量以进行进一步的科学分析,需要进行客观的图像质量度量。尤其是在处理基于地面的观察结果时,这些观察结果受不同的观察条件和云的影响时,质量评估必须考虑多个效果并提供有关受影响地区的信息。在这项研究中,我们开发了一种深度学习方法,该方法适合识别异常并提供对太阳能全盘H $α$过滤器的图像质量评估。该方法基于高质量观测的结构外观和真实图像分布。我们采用具有编码器架构的神经网络来执行选定的高质量观​​测值的身份转换。编码器网络用于实现输入数据的压缩表示,该输入数据由解码器重建为原始数据。我们使用对抗训练根据高质量的图像分布来恢复截短的信息。当转换质量降低的图像时,未知特征(例如,云,关节尾巴,部分掩盖)的重建显示了与原始的偏差。此差异用于量化观测值的质量并确定受影响的区域。我们将我们的方法应用于2012 - 2019年记录的Kanzelhöhöhe天文台的全盘H $α$过滤器,并证明了其对各种大气条件和工具效应进行可靠的图像质量评估的能力,而无需参考观察。我们的质量指标实现了98.5%的准确性,在区分观察结果的情况下,质量降解效应与明确的观察结果,并提供了一种与人类看法非常吻合的连续质量措施。

In order to assure a stable series of recorded images of sufficient quality for further scientific analysis, an objective image quality measure is required. Especially when dealing with ground-based observations, which are subject to varying seeing conditions and clouds, the quality assessment has to take multiple effects into account and provide information about the affected regions. In this study, we develop a deep learning method that is suited to identify anomalies and provide an image quality assessment of solar full-disk H$α$ filtergrams. The approach is based on the structural appearance and the true image distribution of high-quality observations. We employ a neural network with an encoder-decoder architecture to perform an identity transformation of selected high-quality observations. The encoder network is used to achieve a compressed representation of the input data, which is reconstructed to the original by the decoder. We use adversarial training to recover truncated information based on the high-quality image distribution. When images with reduced quality are transformed, the reconstruction of unknown features (e.g., clouds, contrails, partial occultation) shows deviations from the original. This difference is used to quantify the quality of the observations and to identify the affected regions. We apply our method to full-disk H$α$ filtergrams from Kanzelhöhe Observatory recorded during 2012-2019 and demonstrate its capability to perform a reliable image quality assessment for various atmospheric conditions and instrumental effects, without the requirement of reference observations. Our quality metric achieves an accuracy of 98.5% in distinguishing observations with quality-degrading effects from clear observations and provides a continuous quality measure which is in good agreement with the human perception.

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