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首页> 外文期刊>ISPRS Annals of the Photogrammetry, Remote Sensing and Spatial Information Sciences >SEMANTIC SEGMENTATION OF MANMADE LANDSCAPE STRUCTURES IN DIGITAL TERRAIN MODELS
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SEMANTIC SEGMENTATION OF MANMADE LANDSCAPE STRUCTURES IN DIGITAL TERRAIN MODELS

机译:数字地形模型中人造景观结构的语义分割

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We explore the use of semantic segmentation in Digital Terrain Models (DTMS) for detecting manmade landscape structures in archaeological sites. DTM data are stored and processed as large matrices of depth 1 as opposed to depth 3 in RGB images. The matrices usually contain continuous real-valued information upper bound of which is not fixed, such as distance or height from a reference surface. This is different from RGB images that contain integer values in a fixed range of 0 to 255. Additionally, RGB images are usually stored in smaller multidimensional matrices, and are more suitable as inputs for a neural network while the large DTMs are necessary to be split into smaller sub-matrices to be used by neural networks. Thus, while the spatial information of pixels in RGB images are important only locally within a single image, for DTM data, they are important locally, within a single sub-matrix processed for neural network, and also globally, in relation to the neighboring sub-matrices. To cope with the two differences, we apply min-max normalization to each input matrix fed to the neural network, and use a slightly modified version of DeepLabv3+ model for semantic segmentation. We show that with the architecture change, and the preprocessing, better results are achieved.
机译:我们探讨了数字地形模型(DTM)中的语义细分,以检测考古地点的人造景观结构。 DTM数据被存储和处理为深度1的大矩阵,而不是RGB图像中的深度3。矩阵通常包含连续的实值信息上限,其上限不是固定的,例如来自参考表面的距离或高度。这与包含在0到255的固定范围内的整数值的RGB图像不同。另外,RGB图像通常存储在较小的多维矩阵中,并且更适合于神经网络的输入,而在需要拆分大型DTM时是针对神经网络的输入成为神经网络使用的较小子矩阵。因此,虽然RGB图像中的像素的空间信息仅在局部图像内很重要,但对于DTM数据,它们在本地重要的是,在针对神经网络处理的单个子矩阵内,并且在全局中,相对于相邻的子-matrices。为了应对两个差异,我们将最小最大归一化应用于馈送到神经网络的每个输入矩阵,并使用略微修改的depplabv3 +模型进行语义分割。我们展示了通过架构改变,并且达到预处理,实现了更好的结果。

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