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A novel texture extraction and classification method for mineral froth images based on complex networks

机译:基于复杂网络的矿物泡沫图像纹理提取与分类的新方法

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The flotation froth surface texture can be used as an indication to illustrate the production states. A novel froth image texture extraction and classification method based on complex network is presented to obtain the accurate texture features descriptors and facilitate the mineral flotation process monitoring. Firstly, froth images are pre-classified by defining a similarity coefficient. Then, designing the optimum value for the parameter p of Minkowski distance is discussed according to the pre-classification result. A network model of froth image is built utilizing complex network theory. The energy and entropy of the complex network model as texture descriptors is given in terms of the Minkowski distance. Finally, copper froth images captured are used in experiments, and texture feature are extracted. Experiment results show that the presented method can automatically select the optimum values of froth image texture extraction according to their characteristics. It can accurately describe the texture difference of different mineral flotation states, and accurately identify the floatation states.
机译:浮选泡沫的表面纹理可以用作说明生产状态的指示。提出了一种基于复杂网络的泡沫图像纹理提取与分类的新方法,以获取准确的纹理特征描述子,并便于矿物浮选过程的监测。首先,通过定义相似系数对泡沫图像进行预分类。然后,根据预分类结果,讨论了设计Minkowski距离参数p的最优值。利用复杂网络理论建立了泡沫图像的网络模型。复杂网络模型作为纹理描述符的能量和熵是根据Minkowski距离给出的。最后,将捕获的铜泡沫图像用于实验,并提取纹理特征。实验结果表明,该方法可以根据特征自动选择最佳的泡沫图像纹理提取值。它可以准确地描述不同矿物浮选状态的质地差异,并准确地识别出浮选状态。

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