Automatic Segmentation by the Method of Interval Fusion with Preference Aggregation When Recognizing Weld Defects; Russian Journal of Nondestructive Testing; Vol. 59, iss. 12
| Parent link: | Russian Journal of Nondestructive Testing=Дефектоскопия.— .— New York: Springer Science+Business Media LLC. Vol. 59, iss. 12.— 2023.— P. 1280-1290 |
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| المؤلف الرئيسي: | |
| مؤلف مشترك: | |
| مؤلفون آخرون: | |
| الملخص: | Title screen Quality control in welding is usually carried out during the visual inspection process and is highly dependent on an operator experience. In this paper, an approach to automatic detection and classification of a defective region is proposed, in which the segmentation of the analyzed photographic image of a weld (i.e., its division into defective and defect-free regions) is performed using the region growing procedure. The starting points for this procedure are selected by the authors’ robust method of interval fusion with preference aggregation (IF&PA) on the base of image histogram analysis. Testing the proposed approach for real life photographic images showed its ability to detect different types of weld defects with higher accuracy compared to traditional methods, such as the Otsu method and k-means. Текстовый файл AM_Agreement |
| اللغة: | الإنجليزية |
| منشور في: |
2023
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| الموضوعات: | |
| الوصول للمادة أونلاين: | https://doi.org/10.1134/S1061830923600855 Статья на русском языке |
| التنسيق: | MixedMaterials الكتروني فصل الكتاب |
| KOHA link: | https://koha.lib.tpu.ru/cgi-bin/koha/opac-detail.pl?biblionumber=674997 |
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| 200 | 1 | |a Automatic Segmentation by the Method of Interval Fusion with Preference Aggregation When Recognizing Weld Defects |f S. V. Muravyov, D. C. Nguyen |d Автоматическая сегментация методом комплексирования интервалов агрегированием предпочтений при распознавании дефектов сварки |z rus | |
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| 330 | |a Quality control in welding is usually carried out during the visual inspection process and is highly dependent on an operator experience. In this paper, an approach to automatic detection and classification of a defective region is proposed, in which the segmentation of the analyzed photographic image of a weld (i.e., its division into defective and defect-free regions) is performed using the region growing procedure. The starting points for this procedure are selected by the authors’ robust method of interval fusion with preference aggregation (IF&PA) on the base of image histogram analysis. Testing the proposed approach for real life photographic images showed its ability to detect different types of weld defects with higher accuracy compared to traditional methods, such as the Otsu method and k-means. | ||
| 336 | |a Текстовый файл | ||
| 371 | 0 | |a AM_Agreement | |
| 461 | 1 | |t Russian Journal of Nondestructive Testing |c New York |l Дефектоскопия |n Springer Science+Business Media LLC. | |
| 463 | 1 | |t Vol. 59, iss. 12 |v P. 1280-1290 |d 2023 | |
| 606 | |a image processing | ||
| 610 | 1 | |a segmentation | |
| 610 | 1 | |a histogram | |
| 610 | 1 | |a defect region | |
| 610 | 1 | |a welding joint | |
| 610 | 1 | |a interval fusion | |
| 610 | 1 | |a preference aggregation | |
| 610 | 1 | |a preference aggregation | |
| 610 | 1 | |a электронный ресурс | |
| 610 | 1 | |a труды учёных ТПУ | |
| 700 | 1 | |a Muravyov (Murav’ev) |b S. V. |c specialist in the field of control and measurement equipment |c Professor of Tomsk Polytechnic University,Doctor of technical sciences |f 1954- |g Sergey Vasilyevich |9 15440 | |
| 701 | 0 | |a Nguyen Duc C. | |
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| 856 | 4 | |u https://doi.org/10.1134/S1061830923600855 |z https://doi.org/10.1134/S1061830923600855 | |
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