Using visual texture analysis to classify raw coal components

P. V. Vuuren, H. Dorland, M. L. Roux, W. C. Venter, P. Erasmus, M. Dorland, Q. Campbell
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引用次数: 3

Abstract

Coal ore isn't a uniform material. In order to optimize the coal liberation process it is necessary to classify a coal ore sample into its constituent components as quickly and cheaply possible. This paper investigates whether it is feasible to employ image processing and pattern recognition to segment a photographic image of coal ore into its various mineral components prior to the sample being crushed. The key to solving this classification problem is to model the visual texture of the various coal components by means of a low-dimensional texture space consisting of two main dimensions, namely: roughness and regularity. The regularity of each texture is estimated by means of a novel model-based approach. The distribution of the various coal components in the resultant feature space is modelled by means of a mixtures model and a simple nearest-neighbour decision rule is used to classify each pixel in the image. The performance of the classification system is encouraging and shows the feasibility of our idea.
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利用视觉纹理分析法对原煤组分进行分类
煤矿石不是一种均匀的物质。为了优化煤解离过程,有必要尽可能快速和廉价地将煤矿石样品分类为其组成成分。本文研究了利用图像处理和模式识别技术,在煤矿破碎前将其摄影图像分割成各种矿物成分的可行性。解决这一分类问题的关键是利用由粗糙度和规则度两个主要维度组成的低维纹理空间对煤中各种成分的视觉纹理进行建模。通过一种新的基于模型的方法来估计每个纹理的规律性。利用混合模型对合成特征空间中各种煤成分的分布进行建模,并使用简单的近邻决策规则对图像中的每个像素进行分类。该分类系统的性能令人鼓舞,表明了该方法的可行性。
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