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Relationship between Mineragraphy Features of Sinter Ore and Its Gray Histogram

机译:烧结矿矿物特征与灰色直方图的关系

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The intelligent recognizing and processing system make a great convenience for recognition and measurement of sinter ore mineragraphy. Specially, it's crucial for a successful intelligent system to extract the minerals' features accurately and sufficiently. The paper got the relatively position of peak of the gray his-togram in theory by using the calculated model of index of reflection and peak-find model of gray histogram; the parameters like μ and θ~2 of familiar minerals were gotten by statistical averaging with Gaussian gray distribution model, the information about the category and content of minerals can also be got by fitting the curve of gray histogram with Gaussian gray distribution model; the feature curves of gray histogram of two minerals were gained by synthesizing two density functions; also the feature parameters such as the number and position of peak and valley of two minerals in different ratios were obtained by differentiating to the distribution functions. The feature parameters, feature curves, and other conclusions lay the foundation for artificial intelligence system of mineragraphy recognizing and processing in sinter ore.
机译:智能识别处理系统为烧结矿金相的识别和测量提供了极大的方便。特别是,对于成功的智能系统而言,准确,充分地提取矿物的特征至关重要。通过计算反射率模型和灰色直方图的峰发现模型,从理论上得到了灰色直方图的峰的相对位置;用高斯灰度分布模型统计平均得到熟悉矿物的μ和θ〜2等参数,用高斯灰度分布模型拟合灰色直方图的曲线也可以得到有关矿物种类和含量的信息。通过合成两个密度函数得到两种矿物的灰色直方图特征曲线。通过微分分布函数,得到了不同比例的两种矿物的峰谷数,谷数等特征参数。特征参数,特征曲线及其他结论为烧结矿矿物学识别的人工智能系统奠定了基础。

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