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首页> 外文期刊>Modern Physics Letters, B. Condensed Matter Physics, Statistical Physics, Applied Physics >A fast learning-based super-resolution method for copper strip defect image
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A fast learning-based super-resolution method for copper strip defect image

机译:一种快速学习的铜带缺陷图像超分辨率方法

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摘要

In this paper, a fast pre-classified-based super-resolution model has been proposed to over come the problems of degraded imaging in weak-target real-time detection system, specialized to copper defect detection. To accurately characterize the defected image, textural features based on the statistical function of gray-gradient are presented. Furthermore, to improve the effectiveness and practicality of the online detection, a concept of pre-classified learning is introduced and an edge smoothness rule is designed. Some experiments are carried out on defect images in different environments and the experimental results show the efficiency and effectiveness of the algorithm.
机译:在本文中,已经提出了一种快速分类的超分辨率模型来实现弱目标实时检测系统中降解成像的问题,专门用于铜缺陷检测。 提出了基于灰度梯度统计功能的迷视图像准确表征缺陷的图像,纹理特征。 此外,为了提高在线检测的有效性和实用性,引入了预分类学习的概念,设计了边缘平滑度规则。 在不同环境中的缺陷图像上进行了一些实验,实验结果显示了算法的效率和有效性。

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