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首页> 外文期刊>Environmental earth sciences >Mapping acidic mine waste with seasonal airborne hyperspectral imagery at varying spatial scales
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Mapping acidic mine waste with seasonal airborne hyperspectral imagery at varying spatial scales

机译:使用季节性的机载高光谱影像在不同的空间尺度上绘制酸性矿山废物

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摘要

Airborne imaging spectrometer (also known as hyperspectral) remote sensing has been widely used to characterize mineralogy on mine waste surfaces, which is useful for predicting potential sources of acidity and metal leaching. The most successful applications employ fine spatial resolution-20-m pixels or smaller. Future satellite imaging spectrometer sensors are proposed to provide coarser spatial resolution-30- to 60-m pixels. This study examined the ability to map minerals related to acid mine drainage with visible to shortwave infrared hyperspectral imagery at varying spatial scales (2-, 15-, 30-, 60-m pixels) at the Leviathan mine Superfund site, located in the Eastern Sierra Nevada. Mineral maps were produced using spectral angle mapper and matched filtering algorithms. The 15-m images provided comparable maps to the 2-m images. The 30- and 60-m images lost the ability to identify smaller features; however, they were still able to identify high-and low-priority remediation zones at least 75 m in width. Based on our results, we believe 30-m spatial resolution on a satellite hyperspectral sensor will be sufficient for identifying hazardous surfaces at larger mine waste sites and provide important reconnaissance information that can help prioritize detailed ground-based studies.
机译:机载成像光谱仪(也称为高光谱)遥感已被广泛用于表征矿山废料表面的矿物学,这对于预测酸度和金属浸出的潜在来源很有用。最成功的应用使用20-m像素或更小的精细空间分辨率。提出了未来的卫星成像光谱仪传感器以提供更粗的30至60 m像素的空间分辨率。这项研究检验了位于东部东部Leviathan矿场超级基金站点在不同空间范围(2、15、30、60像素)上可见到短波红外高光谱图像绘制与酸性矿山排水有关的矿物的能力。内华达山脉。矿物图是使用光谱角度映射器和匹配的过滤算法生成的。 15米的图像提供了与2米的图像相当的地图。 30米和60米的图像无法识别较小的特征;但是,他们仍然能够识别宽度至少为75 m的高优先级和低优先级补救区。根据我们的结果,我们认为卫星高光谱传感器的30米空间分辨率将足以识别较大的矿山废料场中的危险表面,并提供重要的侦察信息,有助于优先进行详细的地面研究。

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