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Autori principali: Veysi, P., Adeli, M., Naziri, N. Peirov
Natura: Preprint
Pubblicazione: 2024
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Accesso online:https://arxiv.org/abs/2405.02298
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author Veysi, P.
Adeli, M.
Naziri, N. Peirov
author_facet Veysi, P.
Adeli, M.
Naziri, N. Peirov
contents The expanding applications, utilized by more users, enhance hardware performance and further develop cloud systems for big data processing. This leads to numerous unexplored deep learning applications, especially in advanced computer vision for object recognition. Deep learning in image processing encompasses varied tasks from recognizing elements with diverse shapes and sizes to complex element classification, coping with varying backgrounds and lighting conditions, and text recognition. Its advantages lie in robust setup and high performance for recognizing complex elements. This work aims to develop a deep learning-based detection system for automated recognition of assembly components differing in geometry, size, contour, or color. Implementing the YOLOv4 algorithm, the system detects components based on their characteristics. Testing with 13 components involves capturing them in different orientations, numbers, individual parts, or assembled groups using a Raspberry Pi microcontroller and camera. Evaluation focuses on correct object recognition, confidence values, different compositions, distances between objects, and environmental factors affecting system quality. Results show positive object recognition across all scenarios, irrespective of orientation or number of objects. Even densely packed objects are correctly recognized with high confidence (97-100%). Lighting conditions don't significantly impact results, and all objects are properly labeled. The developed system is suitable for real-time two-dimensional component detection, with potential for extension to three-dimensional analysis using multiple cameras with varied positioning and views.
format Preprint
id arxiv_https___arxiv_org_abs_2405_02298
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Development and Validation of an Artificial Neural Network for the Recognition of Custom Dataset with YOLOv4
Veysi, P.
Adeli, M.
Naziri, N. Peirov
Computational Engineering, Finance, and Science
The expanding applications, utilized by more users, enhance hardware performance and further develop cloud systems for big data processing. This leads to numerous unexplored deep learning applications, especially in advanced computer vision for object recognition. Deep learning in image processing encompasses varied tasks from recognizing elements with diverse shapes and sizes to complex element classification, coping with varying backgrounds and lighting conditions, and text recognition. Its advantages lie in robust setup and high performance for recognizing complex elements. This work aims to develop a deep learning-based detection system for automated recognition of assembly components differing in geometry, size, contour, or color. Implementing the YOLOv4 algorithm, the system detects components based on their characteristics. Testing with 13 components involves capturing them in different orientations, numbers, individual parts, or assembled groups using a Raspberry Pi microcontroller and camera. Evaluation focuses on correct object recognition, confidence values, different compositions, distances between objects, and environmental factors affecting system quality. Results show positive object recognition across all scenarios, irrespective of orientation or number of objects. Even densely packed objects are correctly recognized with high confidence (97-100%). Lighting conditions don't significantly impact results, and all objects are properly labeled. The developed system is suitable for real-time two-dimensional component detection, with potential for extension to three-dimensional analysis using multiple cameras with varied positioning and views.
title Development and Validation of an Artificial Neural Network for the Recognition of Custom Dataset with YOLOv4
topic Computational Engineering, Finance, and Science
url https://arxiv.org/abs/2405.02298