Interpolation of Geochemical Data with Aster Images Based on AlexNet Convolution Neural Network

Shi Bai, Jie Zhao
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引用次数: 1

Abstract

Being an important geological information source, geochemical data is widely used in mineral exploration, environmental protection, pollution monitoring, etc. However, geochemical data with extensive coverage and fine resolution has become inaccessible, especially in some unreachable and remote areas. Remote sensing data with fast and efficient ability to collect geology related geoinformation has long been employed in many of geological studies. Joint utilization of geochemical and remote sensing data, as well as other sources of geo-data can consequently assist in geological applications such as mineral exploration In recent decades, methodology to integrate remote sensing and geochemical data have significantly improved. During the integration, geochemical data are often interpolated or resampled to finer resolution for match that of remote sensing images but without notable improvement in geo-information quality containedwith. This study proposeda new integration method that uses the AlexNet convolution neural network to interpolate geochemical data with ASTER images. The interpolated geochemical data presents not only with a higher spatial resolution, but also with geological information from remote sensing images.
基于AlexNet卷积神经网络的Aster图像地球化学数据插值
地球化学数据作为一种重要的地质信息来源,在矿产勘查、环境保护、污染监测等方面有着广泛的应用。然而,覆盖范围广、分辨率高的地球化学数据却难以获得,特别是在一些难以到达的偏远地区。遥感数据具有快速、高效地采集地质相关地质信息的能力,长期以来一直被应用于许多地质研究中。因此,联合利用地球化学和遥感数据以及其他地质数据来源可协助诸如矿物勘探等地质应用。近几十年来,综合遥感和地球化学数据的方法有了显著改进。在整合过程中,地球化学数据经常被插值或重采样到更精细的分辨率,以匹配遥感图像,但所包含的地理信息质量没有明显改善。本文提出了一种利用AlexNet卷积神经网络将地球化学数据与ASTER图像进行插值的新方法。插值后的地球化学数据不仅具有更高的空间分辨率,而且具有遥感影像中的地质信息。
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