A Lightweight Network for Defect Detection in Nickel-plated Punched Steel Strip Images
As a critical component of power battery, the quality of Nickel-plated punched steel strip (NPSS) is closely related to the performance of battery. In practice, however, the real-time detection for defects of NPSS with limited computating resources is a challenging task. Current researches on Vision...
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Veröffentlicht in: | IEEE transactions on instrumentation and measurement 2023-01, Vol.72, p.1-1 |
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Zusammenfassung: | As a critical component of power battery, the quality of Nickel-plated punched steel strip (NPSS) is closely related to the performance of battery. In practice, however, the real-time detection for defects of NPSS with limited computating resources is a challenging task. Current researches on Vision-based strip defect detectors emphasize the use of large neural network models to pursue high accuracy, while ignoring the training cost and hardware requirements. To accelerate the model update and deployment cycles, and reduce the application cost, a lightweight detection network for accurate and fast detection of surface defects in NPSS is developed in this paper. First, a new lightweight backbone network, LEDNet, is designed to extract features. Depth dynamic convolution is used as the basic structure of the network to reduce the computational complexity while adaptively extracting effective features. Thereafter, a refine-residual bidirectional aggregation network is built to enhance the bidirectional propagation and reuse high-level and low-level features by further optimizing and adjusting the extracted features. On this basis, feature aggregation capability is improved. Finally, the intersection over union k-means algorithm is used to adjust the anchor box size, which balances the significant difference in aspect ratio of surface defects of NPSS. Experimental results on the NPSS defect data-set show that our network detection accuracy can reach 87.17%, the single-sheet detection rate is 0.09s, and the computational complexity is reduced. Compared with the state-of-the-art detectors, it achieves a strong competitive accuracy and low computational effort, which fully meets the accuracy and real-time requirements in the production environment of NPSS. |
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ISSN: | 0018-9456 1557-9662 |
DOI: | 10.1109/TIM.2023.3237844 |