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引用次数: 0

摘要

本文提出了一种将煤的结构划分为无烟煤、褐煤、烟煤、亚烟煤、石墨和泥煤六大类的新方法。煤的结构在本质上是随机的。现有的分类和检索算法对规则纹理的分类效果较好,但对随机纹理的分类效果较差。随机纹理是纹理的混合。这些纹理只能通过视觉上有意义的分类器来识别。煤的纹理是通过计算田村特征来分类的,因为它们提供了近眼感知。该算法可用于煤的纹理自动分类。该方法对所有类型的煤的分类精度都在87%以上,优于以往开发的其他方法。
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Classification of non-homogenous coal textures
This paper presents a novel method to classify coal texture into the six major categories, namely, Anthracite, Lignite, Bituminous, Sub-bituminous, Graphite and Peat. Coal textures are stochastic in nature. The existing classification and retrieval algorithms work well for the classification of regular texture, but fail to give the same results for the stochastic textures. Stochastic textures are mixture of textures. These textures can be identified only by visually meaningful classifiers. Coal textures are classified by calculating the Tamura features, since they give near-eye perception. This computer vision based algorithm can be used for automated coal texture classification. The proposed method outperforms the other previously developed methods by providing the classification accuracy of more than 87% for all the types of coal.
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