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Seasonal Adaptation of Vegetation Color in Satellite Images for Flight Simulations

机译:用于飞行模拟的卫星图像中植被颜色的季节性适应

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Automatic vegetation identification plays an important role in many applications including remote sensing and high performance flight simulations. This paper proposes a novel method that identifies vegetative areas in satellite images and then alters vegetation color to simulate seasonal changes based on training image pairs. The proposed method first generates a vegetation map for pixels corresponding to vegetative areas, using ISODATA clustering and vegetation classification. The ISODATA algorithm determines the number of clusters automatically. We then apply morphological operations to the clustered images to smooth the boundaries between clusters and to fill holes inside clusters. Six features are then computed for each cluster and then go through a feature selection algorithm and three of them are determined to be effective for vegetation identification. Finally, we classify the resulting clusters as vegetation and non vegetation types based on the selected features using a multilayer perceptron (MLP) classifier. We tested our algorithm by using the 5-fold cross-validation method and achieved 96% classification accuracy based on the three selected features. After the vegetation areas in the satellite images are identified, the proposed method then generates seasonal color adaptation of a target input image based on a pair of training images and, which depict the same area but were captured in different seasons, using image analogies technique. The final output image has seasonal appearance that is similar to that of the training image. The vegetation map ensures that only the colors of vegetative areas in the target image are altered and it also improves the performance of the original image analogies technique. The proposed method can be used in high performance flight simulations and other applications.
机译:自动植被识别在包括遥感和高性能飞行模拟在内的许多应用中起着重要作用。本文提出了一种新的方法,该方法可以识别卫星图像中的营养区域,然后根据训练图像对更改植被颜色以模拟季节变化。所提出的方法首先使用ISODATA聚类和植被分类为与植被区域相对应的像素生成植被图。 ISODATA算法自动确定群集数。然后,我们将形态学运算应用于聚类图像,以平滑聚类之间的边界并填充聚类内部的孔。然后为每个群集计算六个特征,然后通过特征选择算法,确定其中三个对植被识别有效。最后,我们使用多层感知器(MLP)分类器,根据所选特征将所得的聚类分为植被和非植被类型。我们使用5倍交叉验证方法测试了我们的算法,并基于三个选定特征实现了96%的分类精度。在识别出卫星图像中的植被区域之后,所提出的方法随后基于一对训练图像生成目标输入图像的季节色彩适应,并使用图像类比技术描绘了相同的区域但在不同的季节捕获了该图像。最终输出图像具有与训练图像相似的季节性外观。植被图可确保仅更改目标图像中植物区域的颜色,并且还可以改善原始图像类比技术的性能。所提出的方法可以用于高性能飞行仿真和其他应用中。

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