Artificial intelligence-based anomaly detection of the Assen iron deposit in South Africa using remote sensing data from the Landsat-8 Operational Land Imager

Glen T. Nwaila , Steven E. Zhang , Julie E. Bourdeau , Yousef Ghorbani , Emmanuel John M. Carranza
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引用次数: 3

Abstract

Most known mineral deposits were discovered by accident using expensive, time-consuming, and knowledge-based methods such as stream sediment geochemical data, diamond drilling, reconnaissance geochemical and geophysical surveys, and/or remote sensing. Recent years have seen a decrease in the number of newly discovered mineral deposits and a rise in demand for critical raw materials, prompting exploration geologists to seek more efficient and inventive ways for processing various data types at different phases of mineral exploration. Remote sensing is one of the most sought-after tools for early-phase mineral prospecting because of its broad coverage and low cost. Remote sensing images from satellites are publicly available and can be utilised for lithological mapping and mineral exploitation. In this study, we extend an artificial intelligence-based, unsupervised anomaly detection method to identify iron deposit occurrence using Landsat-8 Operational Land Imager (OLI) satellite imagery and machine learning. The novelty in our method includes: (1) knowledge-guided and unsupervised anomaly detection that does not assume any specific anomaly signatures; (2) detection of anomalies occurs only in the variable domain; and (3) a choice of a range of machine learning algorithms to balance between explain-ability and performance. Our new unsupervised method detects anomalies through three successive stages, namely (a) stage I – acquisition of satellite imagery, data processing and selection of bands, (b) stage II – predictive modelling and anomaly detection, and (c) stage III – construction of anomaly maps and analysis. In this study, the new method was tested over the Assen iron deposit in the Transvaal Supergroup (South Africa). It detected both the known areas of the Assen iron deposit and additional deposit occurrence features around the Assen iron mine that were not known. To summarise the anomalies in the area, principal component analysis was used on the reconstruction errors across all modelled bands. Our method enhanced the Assen deposit as an anomaly and attenuated the background, including anthropogenic structural anomalies, which resulted in substantially improved visual contrast and delineation of the iron deposit relative to the background. The results demonstrate the robustness of the proposed unsupervised anomaly detection method, and it could be useful for the delineation of mineral exploration targets. In particular, the method will be useful in areas where no data labels exist regarding the existence or specific spectral signatures of anomalies, such as mineral deposits under greenfield exploration.

基于人工智能的南非Assen铁矿异常检测,使用来自Landsat-8操作陆地成像仪的遥感数据
大多数已知的矿床都是通过昂贵、耗时和基于知识的方法偶然发现的,例如水系沉积物地球化学数据、钻石钻探、侦察地球化学和地球物理调查以及/或遥感。近年来,新发现的矿藏数量减少,对关键原材料的需求增加,促使勘探地质学家寻求更有效和更创新的方法来处理矿产勘探不同阶段的各种数据类型。遥感因其覆盖范围广、成本低而成为早期矿产勘查最受欢迎的工具之一。来自卫星的遥感图像是公开的,可用于岩性测绘和矿物开采。在这项研究中,我们扩展了一种基于人工智能的无监督异常检测方法,利用Landsat-8操作陆地成像仪(OLI)卫星图像和机器学习来识别铁矿的存在。该方法的新颖性包括:(1)不假设任何特定异常特征的知识引导和无监督异常检测;(2)异常检测只发生在变量域中;(3)选择一系列机器学习算法来平衡可解释性和性能。我们的新方法通过三个连续的阶段来检测异常,即(a)第一阶段-获取卫星图像,数据处理和选择波段,(b)第二阶段-预测建模和异常检测,以及(c)第三阶段-构建异常图和分析。在这项研究中,新方法在德兰士瓦超级群(南非)的Assen铁矿床上进行了测试。它探测到了Assen铁矿的已知区域和Assen铁矿周围未知的额外矿床赋存特征。为了总结该区域的异常,对所有模拟波段的重建误差进行了主成分分析。我们的方法增强了Assen矿床的异常性,减弱了背景(包括人为构造异常),从而大大改善了相对于背景的视觉对比度和铁矿圈定。结果表明,所提出的无监督异常检测方法具有较好的鲁棒性,可用于矿产勘查目标的圈定。特别是,该方法将在没有数据标签的地区有用,这些地区没有关于异常存在或特定光谱特征的数据标签,例如在绿地勘探下的矿床。
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