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Adaptive anomaly detection within near-regular milling textures

机译:近规则铣削纹理内的自适应异常检测

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With an application to the quality control of steel, we present image processing algorithms for unsupervised detection of anomalies that are hidden within a global milling pattern. Thereby, we consider global Fourier-based approaches and the localized shearlet decomposition for damping the milling texture. These frequency-based approaches are compared to template-based autocorrelation in the spatial domain. As an alternative approach, the so-called matching pursuit is proposed with a joint Fourier and wavelet-based dictionary, whereby the two models for the global milling grooves and the localized anomalies can be simultaneously exploited. All these approaches are evaluated against a manually annotated real-world data set using quantitative and domain specific qualitative metrics.
机译:通过将其应用于钢的质量控制,我们提出了用于无监督检测隐藏在全局铣削模式中的异常的图像处理算法。因此,我们考虑使用基于全局傅里叶的方法和用于剪切铣削纹理的局部小波分解。这些基于频率的方法在空间域中与基于模板的自相关进行了比较。作为一种替代方法,提出了一种基于傅立叶和基于小波的字典的所谓匹配追踪,从而可以同时利用全局铣削凹槽和局部异常的两个模型。所有这些方法都使用定量和特定领域的定性指标,根据人工注释的实际数据集进行了评估。

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