Использование методов машинного обучения для решения задачи поиска дефектов на растровых изображениях

Authors

  • Михаил Анатольевич Дрюченко Voronezh State University image/svg+xml
  • Александр Анатольевич Сирота Voronezh State University image/svg+xml
  • Вероника Викторовна Гаршина Voronezh State University image/svg+xml
  • Елена Юрьевна Митрофанова Voronezh State University image/svg+xml

DOI:

https://doi.org/10.17308/sait.2018.3/1244

Keywords:

machine learning, neural networks, raster defects

Abstract

The problem of defects detection on images of different classes is considered. Two variants of trained classifiers – direct propagation neural networks and convolutional networks are considered for solving this problem. A distinctive feature of the analyzed images is the presence of objects located on a textural background. Algorithms for defects detection are designed to identify artifacts such as applicative errors, distortions of object boundaries or their parts. Test results for various types of images are given

Author Biographies

  • Михаил Анатольевич Дрюченко, Voronezh State University

    docent at the Chair of Information Processing and Security Technologies at Voronezh State University

  • Александр Анатольевич Сирота, Voronezh State University

    prof., Head of the Chair of Information Processing and Security Technologies at Voronezh State University

  • Вероника Викторовна Гаршина, Voronezh State University

    docent at the Chair of Information Processing and Security Technologies at Voronezh State University

  • Елена Юрьевна Митрофанова, Voronezh State University

    docent at the Chair of Information Processing and Security Technologies at Voronezh State University

References

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Published

2018-08-20

Issue

Section

Intelligent Information Systems

How to Cite

Использование методов машинного обучения для решения задачи поиска дефектов на растровых изображениях. (2018). Proceedings of Voronezh State University. Series: Systems Analysis and Information Technologies, 3, 163-172. https://doi.org/10.17308/sait.2018.3/1244

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