一种快速自动识别太阳黑子的分层方法

Q3 Engineering 光电工程 Pub Date : 2020-07-30 DOI:10.12086/OEE.2020.190342
Zhao Ziliang, Liu Jiazhen, Hu Zhen, Jia Yanhao, Wang Yue, Liang Qingwei, Zhao Zeyang, Liu Yangyi
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引用次数: 2

摘要

对太阳黑子的观测和识别是太阳物理学的一项重要任务。通过观测和分析太阳黑子,太阳物理学家能够以更高的精度分析和预测太阳活动。随着观测仪器的不断进步,太阳全盘图像数据量也在快速增长。为了快速准确地识别和标记太阳黑子,本文提出了一种双层太阳黑子识别模型。第一层模型是基于深度学习模型YOLO。为了提高YOLO对小黑子的识别能力,采用基于交集-过并的k-means算法对YOLO的参数进行了优化。最终的YOLO模型可以识别大多数大型太阳黑子和太阳黑子群,只有少数孤立的小型太阳黑子无法识别。为了进一步提高太阳小黑子的识别率,第二层模型采用AGAST特征检测算法对缺失的太阳小黑子进行针对性识别。在SDO/HMI太阳黑子数据集上的实验结果表明,利用本文提出的模型可以有效识别各类太阳黑子,识别精度较高,从而实现了实时的太阳黑子探测任务。
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A Hierarchical method for quick and automatic recognition of sunspots
The observation and recognition of sunspots is an important task of solar physics. By observing and analyzing sunspots, solar physicists are able to analyze and predict solar activities with higher accuracy. With the con-tinuous progress of observation instruments, solar full-disk image data amount is also on a rapid growth. In order to recognize and label sunspots quickly and accurately, a two-layer sunspot recognition model is proposed in this paper. The first layer model is based on deep learning model YOLO. In order to enhance the ability of YOLO to recognize small sunspots, the parameters of YOLO are optimized by using the k-means algorithm based on intersection-over-union. The final YOLO model can identify most large sunspots and sunspot groups, with only a few isolated small sunspots being unidentified. For the purpose of further improving recognition rate of small sunspots, the second layer model applies AGAST feature detection algorithm to specifically identify the missing small sunspots. The experimental results on SDO/HMI sunspot data set show that all kinds of sunspots can be recognized effectively with high recognition accuracy by using the model proposed in this paper, thus realizing the real-time sunspot detection task.
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来源期刊
光电工程
光电工程 Engineering-Electrical and Electronic Engineering
CiteScore
2.00
自引率
0.00%
发文量
6622
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