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Uncertainty Gated Network for Land Cover Segmentation

机译:不确定性门控网络用于土地覆被分割

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The production of thematic maps depicting land cover is one of the most common applications of remote sensing. To this end, several semantic segmentation approaches, based on deep learning, have been proposed in the literature, but land cover segmentation is still considered an open problem due to some specific problems related to remote sensing imaging. In this paper we propose a novel approach to deal with the problem of modelling multiscale contexts surrounding pixels of different land cover categories. The approach leverages the computation of a heteroscedastic measure of uncertainty when classifying individual pixels in an image. This classification uncertainty measure is used to define a set of memory gates between layers that allow a principled method to select the optimal decision for each pixel.
机译:绘制描绘土地覆盖的专题图是遥感的最常见应用之一。为此,文献中已经提出了几种基于深度学习的语义分割方法,但是由于与遥感成像有关的一些特定问题,土地覆盖分割仍然被认为是一个开放问题。在本文中,我们提出了一种新颖的方法来处理围绕不同土地覆盖类别的像素围绕多尺度上下文建模的问题。当对图像中的单个像素进行分类时,该方法利用了不确定性的异方差度量的计算。该分类不确定性度量用于定义层之间的一组存储门,这些存储门允许使用原则方法为每个像素选择最佳决策。

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