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Benchmarking of six cloud segmentation algorithms for ground-based all- sky imagers

机译:地面全天成像仪的六种云分割算法的基准测试

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摘要

The detection and segmentation of clouds in images taken by ground based cameras is of utmost importance for a large number of applications including all-sky imager based nowcasting systems which optimize solar power plant operation, calculation of the global irradiance, estimation of the cloud base height and support of optical satellite downlink operations.Many approaches to segment clouds in camera images are published. However, comparisons of different approaches are not frequently conducted. Here, we address this question by benchmarking six different cloud segmentation algorithms on images taken by an off-the-shelf surveillance camera. The six different algorithms include (1) a color-channel threshold-based algorithm, (2) a Clear Sky Library (CSL) based approach, (3) a region growing algorithm, (4) the Hybrid thresholding algorithm (HYTA), and a (5) novel, HYTA-based development named HYTA+. Furthermore, (6) a deep convolutional neural network (FCN) is adapted via transfer learning to this problem.The segmentation results of algorithms (1) to (5) are compared to 829 manually segmented reference images. The segmentation algorithms are benchmarked on a test dataset which is divided into 16 meteorological categories. These categories cover different Linke turbidity values, solar positions and cloud cover situations. Results show that three out of the six presented segmentation methods (CSL, HYTA+ and FCN) achieve overall accuracy values above 90%. These approaches outperform the other methods and correctly segment images with a higher consistency. Fixed threshold based methods, as the multicolor criterion, HYTA or the region growing algorithm fail under certain meteorological conditions. The FCN based segmentation (6) is tested on 160 images where it delivers the best overall pixel-by-pixel accuracy of 97.0%.
机译:对于许多应用,包括基于全天空成像仪的临近预报系统,其可优化太阳能发电厂的运行,全球辐照度的计算,云底高度的估计,对地面应用的摄像头中的云的检测和分割至关重要。并支持光学卫星下行链路操作。发布了许多在相机图像中分割云的方法。但是,不经常进行不同方法的比较。在这里,我们通过对现成的监控摄像机拍摄的图像上的六种不同的云分割算法进行基准测试来解决此问题。六种不同的算法包括(1)基于颜色通道阈值的算法,(2)基于晴空库(CSL)的方法,(3)区域增长算法,(4)混合阈值算法(HYTA)和(5)一种新颖的基于HYTA的开发,名为HYTA +。此外,(6)通过转移学习将深度卷积神经网络(FCN)应用于此问题。将算法(1)至(5)的分割结果与829个手动分割的参考图像进行比较。分割算法以测试数据集为基准,该测试数据集分为16个气象类别。这些类别涵盖了不同的Linke浊度值,太阳位置和云量情况。结果表明,在提出的六种分割方法中,有三种(CSL,HYTA +和FCN)达到了90%以上的总体准确度。这些方法优于其他方法,并且可以以较高的一致性正确地分割图像。基于固定阈值的方法(作为多色标准),HYTA或区域增长算法在某些气象条件下会失败。基于FCN的分割(6)在160张图像上进行了测试,在该图像上,其提供的最佳逐像素整体精度为97.0%。

著录项

  • 来源
    《Solar Energy》 |2020年第5期|596-614|共19页
  • 作者

  • 作者单位

    German Aerosp Ctr DLR Inst Solar Res Paseo De Almeria 73 Almeria 04001 Spain|German Aerosp Ctr DLR Inst Solar Res Ctra Senes Km 4-5 Almeria 042000 Spain;

    German Aerosp Ctr DLR Inst Solar Res Paseo De Almeria 73 Almeria 04001 Spain;

    Univ Patras Dept Phys Lab Atmospher Phys Patras 26500 Greece;

  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);美国《生物学医学文摘》(MEDLINE);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Cloud segmentation; All-sky imagers; Benchmarking; Neural network; Clear sky library;

    机译:云分割全天候成像仪;标杆管理;神经网络;晴空图书馆;

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