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首页> 外文期刊>International journal of machine learning and cybernetics >Froth image clustering with feature semi-supervision through selection and label information
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Froth image clustering with feature semi-supervision through selection and label information

机译:通过选择和标签信息与特征半监督泡沫图像聚类

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Accurate classification and recognition of coal flotation froth is one of the key technologies for intelligent coal separation. At present, the coal flotation process relies on artificial recognition of froth features for adjusting the reagent dosage, which cannot realize the optimal control of the quality of the clean coal product and the cost of the reagents. Therefore, in this paper, it is proposed a method of froth image clustering with feature semi-supervision through selection and label information. It is mainly divided into two stages: offline clustering and online recognition. The offline stage is to preprocess the froth image under various reagent conditions, extract the morphology, colour and texture features, and select the multi-dimensional optimal froth image features. A small number of marked samples are introduced to optimize the Gaussian mixture model. The selected optimal features are integrated into the optimized Gaussian mixture model to construct a froth image clusterer with multi-dimensional optimal features and class labels. In the online stage, the real-time froth image features are input clusterer and compared with the cluster feature samples to identify the current reagents conditions, which is used as feedback information to guide the abnormal reagent conditions during the production process. The effect of the amount of supervision information and the quality of feature on clustering results is analyzed and compared through experiments. The application results show that this method can provide key technical support for the accurate control of the dosage of reagents and the quality of clean coal product in the coal flotation production process, reduce the cost of reagents and the number of production accidents, improve the economic benefits, and promote the development of coal flotation intelligence to a higher level.
机译:准确分类和煤炭浮潜的识别是智能煤炭分离的关键技术之一。目前,煤浮选过程依赖于人工识别用于调节试剂剂量的泡沫特征,这不能实现清洁煤产物质量的最佳控制和试剂的成本。因此,在本文中,通过选择和标签信息提出了一种具有特征半监督的泡沫图像聚类方法。它主要分为两个阶段:离线聚类和在线识别。离线阶段是在各种试剂条件下预处理泡沫图像,提取形态,颜色和纹理特征,选择多维最佳泡沫图像特征。引入少量标记的样品以优化高斯混合模型。所选择的最佳功能集成到优化的高斯混合模型中,以构建具有多维最佳特征和类标签的泡沫图像集群。在在线阶段,实时泡沫图像特征是输入集群器,与群集特征样本进行比较以识别当前试管条件,其用作在生产过程中引导异常试剂条件的反馈信息。通过实验分析了监督信息量和特征质量对聚类结果的影响。应用结果表明,该方法可以提供重点技术支持,用于准确控制试剂的剂量和洁净煤产品的质量在煤浮动生产过程中,降低试剂的成本和生产事故的数量,提高经济福利,促进煤浮选智能发展到更高水平。

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