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EVALUATION OF ASTER IMAGES FOR CHARACTERIZATION AND MAPPING OF AMETHYST MINING RESIDUES

机译:ASTER图像评估紫水晶矿物残留物的表征和映射

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The objective of this work was to evaluate the potential of Advanced Spaceborne Thermal Emission and Reflection Radiometer (ASTER), subsystems VNIR (Visible and Near Infrared) and SWIR (Short Wave Infrared) images, for discrimination and mapping of amethyst mining residues (basalt) in the Ametista do Sul Region, Rio Grande do Sul State, Brazil. This region provides the most part of amethyst mining of the World. The basalt is extracted during the mining process and deposited outside the mine. As a result, mounts of residues (basalt) rise up. These mounts are many times smaller than ASTER pixel size (VNIR - 15 meters and SWIR - 30 meters). Thus, the pixel composition becomes a mixing of various materials, hampering its identification and mapping. Trying to solve this problem, multispectral algorithm Maximum Likelihood (MaxVer) and the hyperspectral technique SAM (Spectral Angle Mapper) were used in this work. Images from ASTER subsystems VNIR and SWIR were used to perform the classifications. SAM technique produced better results than MaxVer algorithm. The main error found by the techniques was the mixing between "shadow" and "mining residues/basalt" classes. With the SAM technique the confusion decreased because it employed the basalt spectral curve as a reference, while the multispectral techniques employed pixels groups that could have spectral mixture with other targets. The results showed that in tropical terrains as the study area, ASTER data can be efficacious for the characterization of mining residues.
机译:这项工作的目的是评估高级星载热排放和反射辐射计(Aster),子系统VNIR(可见和近红外)和SWIR(短波红外)图像的潜力,用于歧视和测绘乙型矿物残留物(玄武岩)在Ametista Do Sul Region,拉里尔德苏州苏州。该地区提供了世界上紫水晶矿业的大部分。在采矿过程中提取玄武岩,并在矿井外部沉积。结果,残留物(玄武岩)升起。这些安装件小于Aster Pixel尺寸(VNIR - 15米和SWIR - 30米)的多倍。因此,像素组合物成为各种材料的混合,阻碍其识别和映射。试图解决这个问题,在这项工作中使用了多光谱算法最大可能性(Maxver)和高光谱技术SAM(光谱角映射器)。来自ASTER子系统VNIR和SWIR的图像用于执行分类。 SAM技术产生比Maxver算法更好的结果。技术发现的主要误差是“阴影”和“采矿残留物/玄武岩”类之间的混合。利用SAM技术,困惑减少,因为它采用玄武岩光谱曲线作为参考,而多光谱技术采用具有与其他靶标具有光谱混合物的像素组。结果表明,在热带地区作为研究区,紫苑数据对于采矿残留物的表征可能是有效的。

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