有监督空间插值的位置相关部分卷积

Hirotaka Hachiya , Kotaro Nagayoshi , Asako Iwaki , Takahiro Maeda , Naonori Ueda , Hiroyuki Fujiwara
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引用次数: 0

摘要

获取连续的空间数据,例如空间地面运动,对于评估受损地区和适当分配救援和医疗小组至关重要。因此,开发了空间插值方法,从相邻的观测值线性估计未观测点的值,即逆距离加权和克里格法。同时,基于高分辨率结构模型的三维有限差分方法可以生成各种场景的真实空间连续环境数据。这些可以收集监督数据,即使是未观察到的点。因此,本文提出了一个有监督的空间插值框架,并应用了非常先进的深度插值方法,其中空间分布的观测点被视为掩膜图像,并通过卷积编码器-解码器网络进行非线性扩展。但是,由于目标与周围观测点之间的关系因地形和地下结构的不同而不同,平移不变性的特性避免了局部细粒度插值。为了克服这一问题,本文提出引入位置相关的部分卷积,其中基于可训练的位置特征映射根据核权重在图像上的位置进行调整。实验结果表明,利用玩具和地面运动数据,该方法是有效的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Position-dependent partial convolutions for supervised spatial interpolation

Acquiring continuous spatial data, e.g., spatial ground motion, is essential to assess the damaged area and appropriately assign rescue and medical teams. Therefore, spatial interpolation methods have been developed to estimate the value of unobserved points linearly from neighbor observed values, i.e., inverse distance weighting and Kriging. Meanwhile, realistic spatial continuous environmental data with various scenarios can be generated by 3-D finite difference methods using a high-resolution structure model. These enable to collect supervised data even for unobserved points. Therefore, this paper proposes a framework of supervised spatial interpolation and applies highly advanced deep inpainting methods, where spatially distributed observed points are treated as masked images and non-linearly expanded through convolutional encoder–decoder networks. However, the property of translation invariance would avoid locally fine-grained interpolation because the relation between the target and surrounding observation points varies among regions owing to their topography and subsurface structure. To overcome this issue, this paper proposes introducing position-dependent partial convolution, where kernel weights are adjusted depending on their position on an image based on the trainable position-feature map. The experimental results show the effectiveness of the proposed method, called Position-dependent Deep Inpainting Method, using toy and ground-motion data.

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来源期刊
Machine learning with applications
Machine learning with applications Management Science and Operations Research, Artificial Intelligence, Computer Science Applications
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