Abstract

One important aspect of assessing the quality in pulp and papermaking is dirt particle counting and classification. Knowing the number and types of dirt particles present in pulp is useful for detecting problems in the production process as early as possible and for fixing them. Since manual quality control is a time-consuming and laborious task, the problem calls for an automated solution using machine vision techniques. However, the ground truth required to train an automated system is difficult to ascertain, since all of the dirt particles should be manually segmented and classified based on image information. This paper proposes a framework for developing and tuning dirt particle detection and classification systems. To avoid manual annotation, dry pulp sheets with a single dirt type in each were exploited to generate semisynthetic images with the ground truth information. To classify the dirt particles, a set of features were computed for each image segment. Sequential feature selection was employed to determine a close-to-optimal set of features to be used in classification. The framework was tested both with semisynthetically generated images based on real pulp sheets and with independent original real pulp sheets without any generation. The results of the experiments show that the semisynthetic procedure does not significantly change the properties of images and has little effect on the particle segmentation. The feature selection proved to be important when the number of dirt classes changes since it allows to improve the classification results. Using the standard classification methods, it is possible to obtain satisfactory results, although the methods modeling the data, such as the Bayesian classifier using the Gaussian Mixture Model, show better performance.

Highlights

  • To optimize its production processes, the pulp- and papermaking industry is searching for intelligent solutions to assess and control product quality

  • The semisynthetic ground truth generation consists of the following stages: (1) dirt particle segmentation and database generation, (2) background generation to fill the holes left by removed dirt particles, and (3) random scattering of the dirt particle images and creation of the corresponding ground truth image

  • This paper proposed a framework for developing dirt particle classification systems

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Summary

Introduction

To optimize its production processes, the pulp- and papermaking industry is searching for intelligent solutions to assess and control product quality. The paper is imaged by a CCD line and the dirt is segmented using a local dynamic threshold, which allows the system to segment and detect the impurities in pulp with a low error rate These methods only count the dirt particles and do not address the more challenging problem of dirt particle classification. [1], it is shown that an inspection by humans may be subjective: the number of dirt particles detected by different inspectors was different In their previous publications, the authors have presented a solution for generating the ground truth [22] and conducted initial experiments concerning the dirt classification problem [21].

Framework for developing dirt particle classification
Workflow description
Semisynthetic ground truth generation
Segmenting images of sheets with dirt
Background generation
Inclusion of dirt particles
Dirt features and their use in classification
Feature extraction and evaluation
Classification methods
Experiments and results
The effect of the semisynthetic procedure on the segmentation
Method performance when an unknown dirt type appears
Conclusion
17. Pulps - preparation of laboratory sheets for physical testing - part 1
Findings
25. Verity IA eBusiness Team
Full Text
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