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Characterization of aluminum hydroxide particles from the Bayer process using neural network and Bayesian classifiers

机译:使用神经网络和贝叶斯分类器对来自拜耳法的氢氧化铝颗粒进行表征

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An automatic process of isolating and characterizing individual aluminum hydroxide particles from the Bayer process in scanning electron microscope gray-scale images of samples is described. It uses image processing algorithms, neural nets and Bayesian classifiers. As the particles are amorphous and different greatly, there were complex nonlinear decisions and anomalies. The process is in two stages; isolation of particles, and classification of each particle. The isolation process correctly identifies 96.9% of the objects as complete and single particles after a 15.5% rejection of questionable objects. The sample set had a possible 2455 particles taken from 384 256/spl times/256-pixel images. Of the 15.5%, 14.2% were correctly rejected. With no rejection the accuracy drops to 91.8% which represents the accuracy of the isolation process alone. The isolated particles are classified by shape, single crystal protrusions, texture, crystal size, and agglomeration. The particle samples were preclassified by a human expert and the data were used to train the five classifiers to embody the expert knowledge. The system was designed to be used as a research tool to determine and study relationships between particle properties and plant parameters in the production of smelting grade alumina by the Bayer process.
机译:描述了在扫描电子显微镜灰度图像中从拜耳法中分离和表征单个氢氧化铝颗粒的自动过程。它使用图像处理算法,神经网络和贝叶斯分类器。由于粒子是无定形的且相差很大,因此存在复杂的非线性决策和异常现象。该过程分为两个阶段:隔离粒子,并对每个粒子进行分类。在15.5%拒绝可疑对象之后,隔离过程正确地将96.9%的对象识别为完整的单个粒子。样本集可能包含来自384 256 / spl次/ 256像素图像的2455个粒子。在15.5%中,有14.2%被正确拒绝。在没有拒绝的情况下,准确度下降到了91.8%,这仅代表隔离过程的准确度。分离出的颗粒按形状,单晶突起,织构,晶体尺寸和附聚进行分类。粒子样本由人类专家进行了预分类,并且数据用于训练五个分类器以体现专家知识。该系统旨在用作研究工具,以确定和研究通过拜耳法生产冶炼级氧化铝时颗粒性质与设备参数之间的关系。

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