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Cloud Extraction from Chinese High Resolution Satellite Imagery by Probabilistic Latent Semantic Analysis and Object-Based Machine Learning

机译:基于概率潜在语义分析和基于对象的机器学习从中国高分辨率卫星影像中提取云

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Automatic cloud extraction from satellite imagery is a vital process for many applications in optical remote sensing since clouds can locally obscure the surface features and alter the reflectance. Clouds can be easily distinguished by the human eyes in satellite imagery via remarkable regional characteristics, but finding a way to automatically detect various kinds of clouds by computer programs to speed up the processing efficiency remains a challenge. This paper introduces a new cloud detection method based on probabilistic latent semantic analysis (PLSA) and object-based machine learning. The method begins by segmenting satellite images into superpixels by Simple Linear Iterative Clustering (SLIC) algorithm while also extracting the spectral, texture, frequency and line segment features. Then, the implicit information in each superpixel is extracted from the feature histogram through the PLSA model by which the descriptor of each superpixel can be computed to form a feature vector for classification. Thereafter, the cloud mask is extracted by optimal thresholding and applying the Support Vector Machine (SVM) algorithm at the superpixel level. The GrabCut algorithm is then applied to extract more accurate cloud regions at the pixel level by assuming the cloud mask as the prior knowledge. When compared to different cloud detection methods in the literature, the overall accuracy of the proposed cloud detection method was up to 90 percent for ZY-3 and GF-1 images, which is about a 6.8 percent improvement over the traditional spectral-based methods. The experimental results show that the proposed method can automatically and accurately detect clouds using the multispectral information of the available four bands.
机译:对于许多遥感光学应用来说,从卫星图像中自动提取云是至关重要的过程,因为云会局部遮挡表面特征并改变反射率。可以通过人眼在卫星图像中通过明显的区域特征轻松区分云,但是找到一种通过计算机程序自动检测各种云以提高处理效率的方法仍然是一个挑战。本文介绍了一种新的基于概率潜在语义分析(PLSA)和基于对象的机器学习的云检测方法。该方法首先通过简单线性迭代聚类(SLIC)算法将卫星图像分割为超像素,同时还提取光谱,纹理,频率和线段特征。然后,通过PLSA模型从特征直方图中提取每个超像素中的隐式信息,通过该模型可以计算每个超像素的描述符以形成用于分类的特征矢量。此后,通过优化阈值并在超像素级别应用支持向量机(SVM)算法来提取云掩码。然后,通过假设云遮罩为先验知识,将GrabCut算法应用于在像素级别提取更准确的云区域。与文献中不同的云检测方法相比,对于ZY-3和GF-1图像,所提出的云检测方法的总体准确度高达90%,比传统的基于光谱的方法提高了6.8%。实验结果表明,该方法能够利用现有四个波段的多光谱信息自动,准确地检测云。

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