The remote mapping of minerals and discrimination of ore and waste on surfaces are important tasks for geological applications such as those in mining. Such tasks have become possible using ground-based, close-range hyperspectral sensors which can remotely measure the reflectance properties of the environment with high spatial and spectral resolution. However, autonomous mapping of mineral spectra measured on an open-cut mine face remains a challenging problem due to the subtleness of differences in spectral absorption features between mineral and rock classes as well as variability in the illumination of the scene. An additional layer of difficulty arises when there is no annotated data available to train a supervised learning algorithm. A pipeline for unsupervised mapping of spectra on a mine face is proposed which draws from several recent advances in the hyperspectral machine learning literature. The proposed pipeline brings together unsupervised and self-supervised algorithms in a unified system to map minerals on a mine face without the need for human-annotated training data. The pipeline is evaluated with a hyperspectral image dataset of an open-cut mine face comprising mineral ore martite and non-mineralised shale. The combined system is shown to produce a superior map to its constituent algorithms, and the consistency of its mapping capability is demonstrated using data acquired at two different times of day.
翻译:在采矿等地质应用中,矿物和矿石及地表废料的远距离测绘和歧视是重要的任务。这些任务已经利用地面和近距离超光谱传感器得以实现,这些传感器能够以高空间和光谱分辨率远程测量环境的反射特性。然而,由于矿物和岩石类别之间光谱吸收特征差异的微妙性以及现场照明的变异性,在露天矿区测量的矿物光谱谱的自动测绘仍是一个具有挑战性的问题。当没有附加说明的数据用于培训受监督的学习算法时,就会产生另外一层困难。建议从超光谱机学习文献的最近进展中抽出一条不受监督的矿面光谱绘图管道。拟议的管道将未经监督和自我监督的算法汇集在一起,在一个统一的系统中绘制矿区矿物表面的矿物的光谱,而不需要人附加说明的培训数据。在评估管道时,将用由矿物或石墨和非矿质平面平面平面图组成的高光谱图像数据集。综合系统在使用高分辨率的每日地图上展示了两种高分辨率的系统。