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基于旋转不变HOG特征的焊缝缺陷类型识别算法 被引量:2

Identification of Weld Defects Based on Rotation-Invariant HOG Feature
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摘要 根据某钢管厂实际采集到的X射线焊缝图像,并通过对焊缝缺陷多样性和形态多变性特点的研究,给出一种基于旋转不变HOG特征提取的焊缝缺陷类型识别算法.首先,将项目前期己经检测到的多种缺陷进行分类和统计,截取每幅焊缝图像的ROI部分,构成实验所需的缺陷样本.通过尺度变换和圆形细胞划分方式,得到具有尺度不变性和旋转不变性的HOG特征,将所有样本特征进行PCA降维,维数由贡献度决定.最后使用LSSVM模型对缺陷进行类型识别.通过研究block块重叠范围对识别正确率的影响,发现在一定范围内,重叠范围越大,识别正确率越高.该算法通过改进传统HOG特征提取方式,提高了缺陷识别的正确率. According to the X-ray weld image collected by a steel pipe factory and the study on diversity and morphological variability of weld defects, a weld defect identification algorithm based on rotation invariant HOG feature extraction is proposed. First of all, we classify different types of defects detected to extract ROI of each image, all of which constitute the defect samples required by the experiment. By means of scale transformation and circular cell division, we obtain HOG characteristics with scale invariance and rotation invariance. Then all the sample features are reduced by PCA dimensionality reduction. The dimension is determined by the contribution. Finally, the LSSVM model is used to identify the defects. By studying the effect of block overlap on the recognition accuracy rate, it is found that the higher overlap range,the higher correctness in a certain unit. The algorithm improves the accuracy of defect recognition by improving the traditional HOG feature extraction method.
作者 王璐 王新房
出处 《计算机系统应用》 2018年第2期157-162,共6页 Computer Systems & Applications
关键词 缺陷类型 HOG特征提取 旋转不变性 PCA降维 defect type HOG feature extraction rotation invariance PCA dimensionality reduction
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  • 1LOWE D. Object recognition from local scale-invariant features [C]// Proceedings of the 7th the IEEE International Conference on Computer Vision. Kerkyra: IEEE, 1999: 1150-1157.
  • 2LOWED. Distinctive image features from scale-invariant key points [J]. International Journal of Computer, 2004, 11 (60): 91-110.
  • 3BAY H, TUYTELAARS T, ESS A. Speeded up robust features (SURF) [J]. Computer Vision and Image Understanding, 2008, 110(3): 346-359.
  • 4DALAL N, TRIGGS B. Histograms of oriented gradients for hu- man detection [C]// Proceedings of 2005 IEEE Computer Society Conference on Computer Vision and Pattern Recognition. San Diego: IEEE, 2005 : 886-893.
  • 5ZHU QIANG, AVIDAN S, MEI Y, et al. Fast human detec- tion using a cascade of histograms of oriented gradients [C]// Proceedings of 2006 IEEE Computer Society Conference on Computer Vision and Pattern Recognition. [S.I.]: IEEE, 2006: 1491-1498.
  • 6BOSH A, ZISSERMAN A, MUNOZ X. Representing shape with a spatial pyramid Kemel [C]// Proceedings of the 6th ACM Intemational Conference on Image and Video Retrieval. New York, USA: ACM Press, 2007: 1091-1096.
  • 7FELZENSZWALB P. A discriminatively trained, muhiscale, deformable part model [C]// Proceedings of the 26th IEEE Con- ference on Computer Vision and Pattern Recognition. Anchorage, AK: IEEE, 2008: 1-8.
  • 8FELZENSZWALB P. Object detection with discriminatively trained part based models [J]. IEEE Transactions on Pattern Analysis and Machine Intelligence, 2010, 32(9) : 1627-1645.
  • 9吴博.HOG特征grgt-图像匹配技术研究[D].武汉:华中科技大学,2011.
  • 10汤彪,左峥嵘,李明.基于旋转不变HOG特征的图像匹配算法[EB/OL].[2013-01-24].http://www.paper.edu.cn/releasepaper/content/201301-1025.

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