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Automatic Detection of Clouds from Aerial Photographs of Snowy Volcanoes

机译:从白雪皑皑的火山的航空照片中自动检测云

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We propose a method for cloud detection from RGB aerial photographs of snow-capped volcanoes of Ecuador. For cartography purposes, clouds are undesired objects that occlude the terrain, while snow-covered areas are valid regions of a map. The traditional approach of image thresholding does not suffice when snowy areas cannot be dismissed from the image in advanced. We combine image thresholding with region growing and neural networks classification to detect clouds at the object level. We show that there is overlap at the pixel level of clouds and snow. At the classification task a fuzzy ARTMAP neural net achieves 91.4 % of success in fast learning mode and 95.5 % of success in slow learning mode at the same vigilance level, for 32×32 pixel images. Incremental learning is achieved at a loss of 0.4 % of the network performance.
机译:我们提出了一种从RGB的厄瓜多尔的RGB航空照片中覆盖云检测方法。为了制图目的,云是不希望的物体,遮挡地形,而积雪区是地图的有效区域。当雪域无法从先进的图像中解雇雪域时,传统的图像阈值的方法不足。我们将图像阈值与区域生长和神经网络分类相结合,以检测对象级别的云。我们表明在云和雪的像素级别存在重叠。在分类任务中,模糊艺术图神经网络在快速学习模式下实现了91.4%的成功,在相同的警惕水平处,慢学习模式中的95.5%的成功,适用于32×32像素图像。增量学习以网络性能的0.4%的损失实现。

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