Abstract

The emergence of hyperspectral imagery paved a new way for rapid mineral mapping. As a classical hyperspectral classification method, spectral matching (SM) can automatically map the spatial distribution of minerals without the need for selecting training samples. However, due to the influence of noise, the mapping accuracy of SM is usually poor, and its per-pixel matching method is inefficient to some extent. To solve these problems, we propose an unsupervised clustering-matching mapping method, using a combination of k-means and SM (KSM). First, nonnegative matrix factorization (NMF) is used and combined with a simple and effective NMF initialization method (SMNMF) for feature extraction. Then, k-means is implemented to get the cluster centers of the extracted features and band depth, which are used for clustering and matching, respectively. Finally, dimensionless matching methods, including spectral angle mapper (SAM), spectral correlation angle (SCA), spectral gradient angle (SGA), and a combined matching method (SCGA) are used to match the cluster centers of band depth with a spectral library to obtain the mineral mapping results. A case study on the airborne hyperspectral image of Cuprite, Nevada, USA, demonstrated that the average overall accuracies of KSM based on SAM, SCA, SGA, and SCGA are approximately 22%, 22%, 35%, and 33% higher than those of SM, respectively, and KSM can save more than 95% of the mapping time. Moreover, the mapping accuracy and efficiency of SMNMF are about 15% and 38% higher than those of the widely used NMF initialization method. In addition, the proposed SCGA could achieve promising mapping results at both high and low signal-to-noise ratios compared with other matching methods. The mapping method proposed in this study provides a new solution for the rapid and autonomous identification of minerals and other fine objects.

Highlights

  • IntroductionAs a nonrenewable resource, play an important role in the survival and development of human society

  • Introduction published maps and institutional affilMinerals, as a nonrenewable resource, play an important role in the survival and development of human society

  • For the three k-means and SM (KSM) mapping methods, NKSM lost a number of calcite and muscovite samples compared with NAKSM and SKSM

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Summary

Introduction

As a nonrenewable resource, play an important role in the survival and development of human society. Food production requires mineral fertilizers, such as nitrogen, phosphorus, and potassium [3,4]. Montmorillonite powder can be used to treat chronic diarrhea [5]. Mapping these mineral resources is a prerequisite for their utilization. The traditional mineral mapping method uses the experience of geologists and laboratory equipment to identify minerals. The large-scale application of this method is time-consuming and laborious. Especially hyperspectral remote sensing, makes it possible to realize a wide area of mineral mapping [6]

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