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Cloud Concentration Classification of UAV Images Based on Image Quality

机译:基于图像质量的无人机图像云浓度分类

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The UAV is easy to be affected by cloud when it is shooting to the ground. It shielding the ground infor-mation and reducing the image quality. It affecting the extraction of prior information and image pro-cessing. At present, there is no feasible and effective method for cloud concentration of cloud images. Therefore, This paper proposed a cloud concentration classification method based on the quality of cloud images. Based on the analysis of the structure of the image, 6 kinds of feature factors which are sensitive to the quality of the cloud images are extracted, and the feature vectors are constructed. And get the quality assessment model to obtain the quality score. Finally, the mean dif-ference of the Mahalanobis distance between the original image set and the test image is used to obtain the cloud images concentration. In view of the quality assessment model and the cloud concentration classification standard, the real-time test cloud images are used as the test database. The algorithm is veri-fied by three aspects: the subjective and objective consistency of image quality, the accuracy of cloud concentration classification, and the efficiency of algorithm. The experimental results show that the algo-rithm has higher accuracy, better subjective and objective consistency, and the classification of image cloud concentration level is more clear, and the algorithm runs more efficiently. The algorithm can meet the cloud UAV images quality assessment and cloud concentration classification.
机译:无人机在地面射击时很容易受到云的影响。它屏蔽了地面信息并降低了图像质量。它影响先验信息的提取和图像处理。目前,尚没有可行,有效的云图像云集中方法。因此,本文提出了一种基于云图像质量的云浓度分类方法。在对图像结构进行分析的基础上,提取了对云图质量敏感的6种特征因子,并构建了特征向量。并获得质量评估模型,以获得质量得分。最后,原始图像集和测试图像之间的马氏距离的平均差用于获得云图像浓度。鉴于质量评估模型和云浓度分类标准,将实时测试云图像用作测试数据库。该算法从三个方面进行了验证:图像质量的主观和客观一致性,云浓度分类的准确性以及算法的效率。实验结果表明,该算法具有较高的准确度,较好的主观和客观一致性,图像云集中度的分类更加清晰,算法运行效率更高。该算法可以满足云无人机图像质量评估和云浓度分类。

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