DEVELOPMENT OF A CASCADE ALGORITHM FOR MONITORING THE MOVEMENT OF PARTS DURING THEIR MANUFACTURE
- Авторлар: Kiseleva P.I.1, Pechenina E.Y.1, Pechenin V.A.1
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Мекемелер:
- Samara National Research University (Samara University)
- Шығарылым: Том 9, № 3 (2023)
- Беттер: 49-55
- Бөлім: Articles
- URL: https://bakhtiniada.ru/2409-4579/article/view/249377
- DOI: https://doi.org/10.18287/2409-4579-2023-9-3-49-55
- ID: 249377
Дәйексөз келтіру
Толық мәтін
Аннотация
A cascade algorithm has been developed that allows identification of contents in production containers. The algorithm consists of two stages: detection of container cells and classification of the contents of each cell. The proposed algorithm makes it possible to achieve a classification accuracy of 89% when trained on a relatively small sample size than would be required when using a direct part detection algorithm, without the cell detection stage. The algorithm is thus suitable for use in environmental monitoring systems in aerospace manufacturing.
Негізгі сөздер
Авторлар туралы
Polina Kiseleva
Samara National Research University (Samara University)
Email: kiseleva.pi@ssau.ru
master of group 3202-240405D
34, Moskovskoye shosse, Samara, 443086, Russian FederationEkaterina Pechenina
Samara National Research University (Samara University)
Email: ek-ko@list.ru
assistant at the department of engine production technologies
34, Moskovskoye shosse, Samara, 443086, Russian FederationVadim Pechenin
Samara National Research University (Samara University)
Хат алмасуға жауапты Автор.
Email: v.a.pechenin@ssau.ru
candidate of technical sciences, associate professor of the department of engine production technologies
34, Moskovskoye shosse, Samara, 443086, Russian FederationӘдебиет тізімі
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