학술논문

Transfer Learning for Real-Time Surface Defect Detection With Multi-Access Edge-Cloud Computing Networks
Document Type
Periodical
Source
IEEE Transactions on Network and Service Management IEEE Trans. Netw. Serv. Manage. Network and Service Management, IEEE Transactions on. 21(1):310-323 Feb, 2024
Subject
Communication, Networking and Broadcast Technologies
Computing and Processing
Image edge detection
Servers
Data models
Computational modeling
Training
Real-time systems
Cloud computing
Surface defect detection
multi-access edge-cloud computing networks
transfer learning
YOLO-v5s
Language
ISSN
1932-4537
2373-7379
Abstract
The development of deep learning and edge computing provides rapid detection capability for surface defects. However, components produced in actual industrial manufacturing environments often have tiny surface defects and training data for each specific defect type is limited. Meanwhile, network resources at the edge of industrial networks are difficult to guarantee. It is challenging to train a proper surface defect detection model for each specific surface defect type and provide a real-time surface defect detection service. To address the challenge, in this paper, we propose a real-time surface defect detection framework based on transfer learning with multi-access edge-cloud computing (MEC) networks. Furthermore, we improve the original YOLO-v5s framework by introducing the spatial and channel attention mechanism, and adding an additional detection head to enhance the detection ability on tiny surface defects. Evaluation results demonstrate that the proposed framework has superior performance in terms of improving detection accuracy and reducing detection delay in the considered MEC network.