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Machine Vision Based Production Condition Classification and Recognition for Mineral Flotation Process Monitoring

机译:基于机器视觉的矿浮选过程生产条件分类与识别

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摘要

A novel froth image analysis based production condition recognition method is presented to identify the froth phases under various production conditions. Gabor wavelet transformation is employed to froth image processing firstly due to the ability of Gabor functions in simulating the response of the simple cells in the visual cortex. Successively, the statistical distribution profiles based feature parameters of the Gabor filter responses rather than the conventional mean and variance are extracted to delineate the essential statistical information of the froth images. The amplitude and phase representations of the Gabor filter responses are both taken into account by empirical marginal and joint statistical modeling. At last, a simple learning vector quantization (LVQ) neural network model is used to learn an effective classifier to recognize the froth production conditions. The effectiveness of this method is validated by the real production data on industrial scale from a bauxite dressing plant. © 2013 Copyright the authors.
机译:提出了一种新颖的基于泡沫图像分析的生产条件识别方法,以识别各种生产条件下的泡沫相。首先,由于Gabor函数能够模拟视觉皮层中简单细胞的响应,因此Gabor小波变换首先用于泡沫图像处理。继而,提取基于Gabor滤波器响应的特征参数的统计分布轮廓而不是常规的均值和方差,以描绘泡沫图像的基本统计信息。 Gabor滤波器响应的幅度和相位表示均通过经验边际和联合统计模型加以考虑。最后,使用简单的学习矢量量化(LVQ)神经网络模型来学习有效的分类器,以识别泡沫生产条件。该方法的有效性通过铝土矿选矿厂的工业规模实际生产数据进行了验证。 ©2013版权所有。

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  • 入库时间 2022-08-31 15:02:27

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