利用频域图像分析方法对木屑颗粒质量进行评估

R. D. Labati, A. Genovese, E. M. Ballester, V. Piuri, F. Scotti, Gianluca Sforza
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引用次数: 5

摘要

颗粒材料的质量分析对各种研究和工业应用具有重要意义。大多数基于图像的方法依赖于图像的分割来测量粒子并聚合它们的特征。然而,当设置不受控制时,颗粒材料的分割会受到严重影响。例如,当设备出现错误,光线条件发生变化,或者当相机被灰尘或类似物质弄脏时。所有这些情况在工业装置中都很常见,就像本文所研究的那样。这项工作提出了一个基于图像处理算法的质量估计框架,避免了分割。考虑的应用场景是定向刨花板(OSB)生产的在线质量控制,OSB是一种经常用于建筑和制造业的木板。该方法使用非参数方法将频域量化为直方图,然后利用计算智能对沉积在传送带上的叠加木颗粒的质量进行分类。用不同噪声条件下的合成图像和真实图像对该方法进行了测试。结果说明了该方法的鲁棒性及其检测木材颗粒显著质量变化的能力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Analyzing images in frequency domain to estimate the quality of wood particles in OSB production
The analysis of the quality of particulate materials is of great importance for a variety of research and industrial applications. Most image-based methods rely on the segmentation of the image to measure the particles and aggregate their characteristics. However, the segmentation of particulate materials can be severely affected when the setup is not controlled. For instance, when there are device errors, changes in the light conditions, or when the camera gets dirty because of the dust or a similar substance. All of these circumstances are common in industrial setups, like the one studied in this paper. This work presents a framework for quality estimation based on image processing algorithms that avoids segmentation. The considered application scenario is the online quality control of the production of Oriented Strand Boards (OSB), a type of wood panel frequently used in construction and manufacturing industries. The proposed method quantizes frequency domain into a histogram using a non-parametric method, which is later exploited using computational intelligence to classify the quality of superimposed wood particles deposed on a conveyor belt. The method has been tested using synthetic and real images with different noise conditions. The results illustrate the robustness of the approach and its capability to detect significant quality changes in the wood particles.
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