Automatic Particle Recognition Based on Digital lmage Processing

E. S. Oparin, M. A. Dzus, N. Davydov, K. S. Khorkov
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Abstract

The purpose of the research is to develop and compare various methods and algorithms for effective particle analysis based on their visual characteristics. Тhe purpose of this article is to develop and compare various methods and algorithms for effective particle analysis based on their visual characteristics. Тhe paper considers two fundamentally different approaches: the analysis of grayscale gradients and the machine learning method.Methods.Тhe research methodology includes the analysis of particle images obtained by precipitation from colloidal solutions after laser ablation and images of powder particles for selective laser melting. Тhe materials were obtained using a Quanta 200 3D electron microscope (FЕ/). For the analysis, threshold brightness binarization, contour recognition methods by the Kenny operator and the Hough algorithm are used to combine boundary points into connected contours. For comparison, the U-Net neural network solution was used, and a dataset generator was created to train the neural network. Hand-cut images of aluminum alloy powder particles and micro and nanoparticles of various metals are used as data for generation.Results.Тhe results of the study show that the Hough method provides recognition of the number of particles at the level of 80%, and the machine learning method achieves 95% accuracy in recognizing the shape of particles. Both methods can be used to analyze microand nanoparticles, including irregularly shaped particles.Conclusion.Тhe findings of the work confirm that neural networks are the optimal solution for automatic particle recognition in digital images. However, in order to create a dataset of sufficient volume, it is necessary to develop a generator of labeled images, which requires a detailed study of the subject area.
基于数字图像处理的粒子自动识别技术
本研究的目的是根据颗粒的视觉特征,开发和比较各种有效的颗粒分析方法和算法。本文的研究目的是根据颗粒的视觉特征,开发和比较各种有效的颗粒分析方法和算法。研究方法包括分析激光烧蚀后从胶体溶液中沉淀获得的粒子图像和选择性激光熔化的粉末粒子图像。材料是使用 Quanta 200 3D 电子显微镜 (FЕ/) 获得的。在分析过程中,使用了阈值亮度二值化、肯尼算子轮廓识别方法和 Hough 算法将边界点组合成相连的轮廓。为了进行比较,使用了 U-Net 神经网络解决方案,并创建了一个数据集生成器来训练神经网络。研究结果表明,Hough 方法对颗粒数量的识别率达到 80%,机器学习方法对颗粒形状的识别准确率达到 95%。结论:研究结果证实,神经网络是数字图像中颗粒自动识别的最佳解决方案。然而,为了创建一个足够大的数据集,有必要开发一个标记图像生成器,这需要对该主题领域进行详细研究。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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