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Estimating size fraction categories of coal particles on conveyor belts using image texture modeling methods

机译:使用图像纹理建模方法估算传送带上煤颗粒的尺寸分数类别

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摘要

Motivation: Physical properties of coal such as particle size distribution have a large influence on the sta bility and operational behavior of fluidized bed reactors and metallurgical furnaces. In particular, the presence of large amounts of "fine" particles invariably has a drastic effect on plant performance as a result of impaired gas permeability characteristics of the coal or ore burden. Therefore, monitoring and control of particle size distribution profiles of such aggregate material on reactor feed streams, such as moving conveyor belts, is critical for predictable operation of these processes. Traditionally, the method of sieve analysis using stock or belt cut samples has been widely used in industry. Unfortunately, the reli ability and usefulness of belt cut techniques are constrained by frequency of sampling as well as labora tory analysis turnaround times. For real-time monitoring and control purposes, automated sampling and analysis methods are more desirable. Methods: In this study, the problem of estimating the particle size distribution profile of material on a moving conveyor belt is formulated within a texture classification framework, which has its basis in machine vision and incorporates elements from statistical pattern rec ognition. Using exemplar images of coal particles taken on a process stream, a set of local features that compactly describes the textural properties of each image are expressed in terms of localized nonlinear features called textons. Representation of image information using textons is primarily motivated by insights from neuroscience research on the optimality of linear oriented basis functions as models of per ception in early processing of visual information in the cortex regions of the human brain. Using these representations for different textures, nearest neighbor and support vector machine classification models are subsequently used to classify test images. Results: Using a comprehensive evaluation, it is shown that the use of texton representation obtained from decomposing images with linear oriented basis functions can be sufficiently discriminative compared to the use of the widely used second-order statistical fea tures or features from other baseline models. In particular, model performance obtained with appropri ately tuned filters suggest the importance of including shape and spatial structure information in an image representation for texture classification of coal particles. Furthermore, using nonlinear support vector machines rather than nearest neighbor classifiers significantly improved classification perfor mance. A texture classification approach to particle size profile estimation has potential applications in the online monitoring of the proportion of "fines" in coal material on moving conveyor belts.
机译:动机:煤的物理性质(例如粒度分布)对流化床反应器和冶金炉的稳定性和操作行为有很大影响。特别地,由于煤或矿石负荷的气体渗透特性受损,大量“细”颗粒的存在总是对工厂性能产生巨大影响。因此,对于这些过程的可预测操作而言,监测和控制反应器进料流(例如移动的传送带)上此类骨料的粒度分布分布图至关重要。传统上,使用原料或带切割样品进行筛分分析的方法已在工业中广泛使用。不幸的是,皮带切割技术的可靠性和实用性受到采样频率以及实验室分析周转时间的限制。为了实时监视和控制,更需要自动采样和分析方法。方法:在这项研究中,在纹理分类框架内提出了估计运动的传送带上物料的粒度分布轮廓的问题,该问题以机器视觉为基础,并结合了统计模式识别的要素。使用在过程流中拍摄的煤颗粒的样例图像,一组紧凑地描述每个图像的织构特性的局部特征以称为织构的局部非线性特征表示。使用texton表示图像信息的主要动机是来自神经科学研究的见解,即对线性定向基础函数的最佳性(作为人脑皮质区域视觉信息的早期处理中的感知模型)。将这些表示用于不同的纹理,随后使用最近邻和支持向量机分类模型对测试图像进​​行分类。结果:使用综合评估表明,与广泛使用的二阶统计特征或其他基线模型的特征相比,使用具有线性定向基函数的分解图像获得的texton表示可充分区分。特别地,使用适当调整的滤波器获得的模型性能表明,在图像表示中包括形状和空间结构信息对于煤颗粒的纹理分类非常重要。此外,使用非线性支持向量机而不是最近邻分类器可显着提高分类性能。一种用于粒度分布估计的纹理分类方法在在线监测移动传送带上煤料中“细粉”的比例方面具有潜在的应用。

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