Evaluating the Use of a Contextual Information Extraction Technique to Identify Mineralized Zones in a Semi-Arid Environment from Aster Satellite Data

M. Hashim
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Abstract

Identification of regions of mineralization by traditional techniques where spectral information of pixel alone is applied during classification, either at pixel or sub-pixel level, is usually accompanied by some level of un-satisfaction. Impulse noises that are usually experienced in digital images from sudden sharp disturbances in the signal degrade the output. This effect often referred to as the salt and pepper noise could further cause information loss, and change the colour of an RGB image. The use of filters (median and morphological) has not totally eliminated the effects. Object-based methods came in with higher filter smoothers to make it better yet, there is potential limitation because of possible negative impact of under segmentation. The errors of under-segmentation cannot be adjusted within a unit of features, which apparently affect the potential accuracy of the entire classification. Thus, this study evaluates the contribution of the contextual information to reduce the effects of noise in the data for effective mineral identification. Rule-based technique was applied for information extraction from a threshold values derived from band ratio (BR) transformation operations on ASTER data. The result indicates clay has the highest mineral density of 47% in the study area, with silicate having the least (3%), among others. This study provides a robust test for contextual cues as anticipated to be most effective and shall contribute towards reducing environmental impacts and protecting biodiversity which is one of the major aspects of sustainable development in relation to mining and mineral processing
利用Aster卫星数据评估上下文信息提取技术在半干旱环境中识别矿化带的应用
传统技术在识别矿化区域时,无论是在像元水平还是亚像元水平上,都是单独利用像元的光谱信息进行分类,往往存在一定程度的不满意。在数字图像中,由于信号中突然的尖锐干扰而产生的脉冲噪声通常会降低输出。这种效应通常被称为盐和胡椒噪声,可能进一步导致信息丢失,并改变RGB图像的颜色。使用过滤器(中值和形态)并没有完全消除这种影响。基于对象的方法具有更高的过滤器平滑度,使其更好,但由于可能存在的负面影响,存在潜在的限制。欠分割的误差不能在一个特征单位内进行调整,这显然会影响整个分类的潜在精度。因此,本研究评估了背景信息的贡献,以减少有效矿物识别数据中的噪声影响。应用基于规则的技术从ASTER数据的带比(BR)变换得到的阈值中提取信息。结果表明,研究区粘土矿物密度最高,为47%,硅酸盐矿物密度最低,为3%。这项研究为预期最有效的上下文线索提供了强有力的检验,并将有助于减少环境影响和保护生物多样性,这是与采矿和矿物加工有关的可持续发展的主要方面之一
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