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一种基于可见光、近红外和热红外光谱组合的煤与矸石识别分类方法

[A Classification Method Based on the Combination of Visible, Near-Infrared and Thermal Infrared Spectrum for Coal and Gangue Distinguishment].

作者信息

Song Liang, Liu Shan-jun, Yu Mo-li, Mao Ya-chun, Wu Li-xin

出版信息

Guang Pu Xue Yu Guang Pu Fen Xi. 2017 Feb;37(2):416-22.

Abstract

Coals and gangues are the main surface dump in the coal mining process. Dynamic monitoring of those dumps using remote sensing technique is of great importance for mine environmental protection. In the traditional classification of visible and near-infrared remote sensing, part of the gangues might be misclassified as coal, due to the phenomenon of “different objects with the same spectrum”, resulting in the decrease of classification accuracy. Thus, this study firstly acquired visible and near-infrared spectrums of 12 coal samples and 115 gangue samples from Tiefa mining area in China. Most of the gangue samples’ spectrums are different from those of the coals, which can be easily distinguished. While, part of the gangues has the similar spectrum with coal which results in misclassification. With an effort to improve image classification accuracy, furthermore, we acquired the thermal infrared spectrum of the misclassified gangue and the coal samples. The results indicate that there are different spectral characteristics in thermal infrared band between coal and gangue samples, which can be identified easily. Therefore, we proposed a method to separate coal from gangue based on the combination of visible, near-infrared and thermal infrared spectrum. In the first palace, the method conducts measurement on the visible and near-infrared spectrums of all samples for the rough classification recurring to the MAO model. Next, the thermal infrared spectrums of the samples, mixed with gangue and coal are acquired, and the Spectral Absorption Ratio(SAR) is utilized as the evaluation index for the second classification. The fused result of classification originates in the two steps above. The method is further verified by using external samples from Tiefa, Yanzhou, Shendong and Jiangcang mining areas in China, whose results have demonstrated that the method has higher accuracy than that of the traditional classification method based on visible and near-infrared spectrum features. The research results indicates that the conjoint analytical method involving multiple spectrums can solve the phenomenon of “different objects with the same spectrum” in a single band, effectively, which will be of great referential significance in the field of terrain classification based on remote sensing technique.

摘要

煤矸石是煤炭开采过程中的主要地表废弃物。利用遥感技术对这些废弃物进行动态监测对于矿山环境保护具有重要意义。在传统的可见光和近红外遥感分类中,由于“同物异谱”现象,部分煤矸石可能被误分类为煤炭,导致分类精度降低。因此,本研究首先获取了中国铁法矿区12个煤样和115个煤矸石样的可见光和近红外光谱。大多数煤矸石样的光谱与煤样不同,易于区分。然而,部分煤矸石与煤具有相似光谱,导致误分类。为了提高图像分类精度,我们进一步获取了误分类煤矸石和煤样的热红外光谱。结果表明,煤样和煤矸石样在热红外波段存在不同的光谱特征,易于识别。因此,我们提出了一种基于可见光、近红外和热红外光谱相结合的煤矸石分离方法。首先,该方法对所有样品的可见光和近红外光谱进行测量,借助MAO模型进行粗分类。其次,获取混合有煤矸石和煤的样品的热红外光谱,并将光谱吸收比(SAR)用作二次分类的评价指标。分类融合结果源于上述两个步骤。利用中国铁法、兖州、神东和江仓矿区的外部样品对该方法进行了进一步验证,结果表明该方法比基于可见光和近红外光谱特征的传统分类方法具有更高的精度。研究结果表明,涉及多光谱的联合分析方法能够有效解决单波段中的“同物异谱”现象,这在基于遥感技术的地物分类领域具有重要的参考意义。

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