As a primary step in mineral exploration, a variety of features are mapped such as lithological units, alteration types, structures, and minerals. These features are extracted to aid decision-making in targeting ore deposits. Different types of remote sensing data including satellite optical and radar, airborne, and drone-based data make it possible to overcome problems associated with mapping these important parameters on the field. The rapid increase in the volume of remote sensing data obtained from different platforms has allowed scientists to develop advanced, innovative, and powerful data processing methodologies. Machine learning methods can help in processing a wide range of remote sensing data and in determining the relationship between the reflectance continuum and features of interest. Moreover, these methods are robust in processing spectral and ground truth measurements against noise and uncertainties. In recent years, many studies have been carried out by supplementing geological surveys with remote sensing data, and this area is now considered a hotspot in geoscience research. This paper reviews the implementation and adaptation of some popular and recently established machine learning methods for remote sensing data processing and investigates their applications for exploring different ore deposits. Lastly, the challenges and future directions in this critical interdisciplinary field are discussed.
翻译:作为矿物勘探的一个主要步骤,绘制了各种特征,如岩浆单位、改变类型、结构和矿物等。这些特征的绘制有助于针对矿床的决策。不同类型的遥感数据,包括卫星光学和雷达、机载和无人驾驶数据,能够克服绘制实地这些重要参数的相关问题。从不同平台获得的遥感数据数量迅速增加,使科学家得以开发出先进的、创新的和强大的数据处理方法。机器学习方法有助于处理广泛的遥感数据,确定反射连续体和感兴趣特征之间的关系。此外,这些方法在处理光谱和地面对噪音和不确定性的真相测量方面十分有力。近年来,许多研究是通过利用遥感数据补充地质调查而进行的,而该领域现在被认为是地球科学研究的一个热点。本文件回顾了遥感数据处理方面一些流行和最近建立的机器学习方法的实施和调整情况,并调查了它们探索不同矿床的应用情况。最后,讨论了这一关键学科领域的挑战和未来方向。