A saliency model-oriented convolution neural network for cloud detection in remote sensing images

IF 0.6 Q4 COMPUTER SCIENCE, THEORY & METHODS Multiagent and Grid Systems Pub Date : 2021-12-20 DOI:10.3233/mgs-210352
Jun Zhang, Jun-Jun Liu
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Abstract

Remote sensing is an indispensable technical way for monitoring earth resources and environmental changes. However, optical remote sensing images often contain a large number of cloud, especially in tropical rain forest areas, make it difficult to obtain completely cloud-free remote sensing images. Therefore, accurate cloud detection is of great research value for optical remote sensing applications. In this paper, we propose a saliency model-oriented convolution neural network for cloud detection in remote sensing images. Firstly, we adopt Kernel Principal Component Analysis (KCPA) to unsupervised pre-training the network. Secondly, small labeled samples are used to fine-tune the network structure. And, remote sensing images are performed with super-pixel approach before cloud detection to eliminate the irrelevant backgrounds and non-clouds object. Thirdly, the image blocks are input into the trained convolutional neural network (CNN) for cloud detection. Meanwhile, the segmented image will be recovered. Fourth, we fuse the detected result with the saliency map of raw image to further improve the accuracy of detection result. Experiments show that the proposed method can accurately detect cloud. Compared to other state-of-the-art cloud detection method, the new method has better robustness.
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面向显著性模型的卷积神经网络在遥感图像云检测中的应用
遥感是监测地球资源和环境变化不可缺少的技术手段。然而,光学遥感图像往往含有大量的云,特别是在热带雨林地区,很难获得完全无云的遥感图像。因此,精确的云检测对于光学遥感应用具有重要的研究价值。本文提出了一种面向显著性模型的卷积神经网络用于遥感图像云检测。首先采用核主成分分析(KCPA)对网络进行无监督预训练。其次,使用小标记样本对网络结构进行微调。在云检测前对遥感图像进行超像素处理,消除不相关背景和非云目标。第三,将图像块输入训练好的卷积神经网络(CNN)进行云检测。同时,分割后的图像将被恢复。第四,将检测结果与原始图像的显著性图进行融合,进一步提高检测结果的准确性。实验表明,该方法能够准确地检测出云。与其他先进的云检测方法相比,新方法具有更好的鲁棒性。
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来源期刊
Multiagent and Grid Systems
Multiagent and Grid Systems COMPUTER SCIENCE, THEORY & METHODS-
CiteScore
1.50
自引率
0.00%
发文量
13
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