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Imaging and Characterisation of Dirt Particles in Pulp and Paper

机译:纸浆和纸中污垢颗粒的成像和表征

摘要

Dirt counting and dirt particle characterisation of pulp samples is an important part of quality control in pulp and paper production. The need for an automatic image analysis system to consider dirt particle characterisation in various pulp samples is also very critical. However, existent image analysis systems utilise a single threshold to segment the dirt particles in different pulp samples. This limits their precision. Based on evidence, designing an automatic image analysis system that could overcome this deficiency is very useful. In this study, the developed Niblack thresholding method is proposed. The method defines the threshold based on the number of segmented particles. In addition, the Kittler thresholding is utilised. Both of these thresholding methods can determine the dirt count of the different pulp samples accurately as compared to visual inspection and the Digital Optical Measuring and Analysis System (DOMAS). In addition, the minimum resolution needed for acquiring a scanner image is defined. By considering the variation in dirt particle features, the curl shows acceptable difference to discriminate the bark and the fibre bundles in different pulp samples. Three classifiers, called k-Nearest Neighbour, Linear Discriminant Analysis and Multi-layer Perceptron are utilised to categorize the dirt particles. Linear Discriminant Analysis and Multi-layer Perceptron are the most accurate in classifying the segmented dirt particles by the Kittler thresholding with morphological processing. The result shows that the dirt particles are successfully categorized for bark and for fibre bundles.
机译:纸浆样品的污垢计数和污垢颗粒表征是纸浆和造纸生产质量控制的重要组成部分。对于考虑各种纸浆样品中污物颗粒特征的自动图像分析系统的需求也非常关键。然而,现有的图像分析系统利用单个阈值来分割不同纸浆样品中的污垢颗粒。这限制了它们的精度。基于证据,设计一种可以克服这一缺陷的自动图像分析系统非常有用。在这项研究中,提出了发达的Niblack阈值方法。该方法基于分段粒子的数量定义阈值。另外,利用了基特勒阈值法。与目视检查和数字光学测量与分析系统(DOMAS)相比,这两种阈值方法都可以准确确定不同纸浆样品的污垢计数。另外,定义了获取扫描仪图像所需的最小分辨率。通过考虑灰尘颗粒特征的变化,卷曲度显示出可接受的差异,以区分不同纸浆样品中的树皮和纤维束。三种分类器分别称为k最近邻,线性判别分析和多层感知器,用于对灰尘颗粒进行分类。线性判别分析和多层感知器通过基特勒阈值和形态学处理对分割的污垢颗粒进行分类最准确。结果表明,污垢颗粒已成功分类为树皮和纤维束。

著录项

  • 作者

    Panjeh Fouladgaran Maryam;

  • 作者单位
  • 年度 2010
  • 总页数
  • 原文格式 PDF
  • 正文语种 en
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