基于无阶尺度不变性GLAC的金属表面纹理识别

Shangbo Mao, V. Natarajan, L. Chia, G. Huang
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摘要

利用计算机视觉和机器学习技术检测金属表面纹理在自动视觉检测(AVI)系统中起着重要的作用。金属表面的纹理识别具有挑战性,因为每种纹理类型的特征取决于在不同光照条件下捕获的金属表面的特性。由于这些纹理不像一般纹理那样具有明显的重复图案,这导致了高的类内多样性。先前的知识表明,表面曲率和深度等表面性质对金属表面的不同纹理类型具有区别性。由于同一类型内纹理的尺度、形状和位置不固定,尺度属性和空间排序信息对于纹理类型的区分不太重要。因此,在探索适合金属表面纹理识别的图像特征时,应综合考虑表面特性、尺度不变性和无序性。本文提出的无阶尺度不变梯度局部自相关(OS-GLAC)算法满足了鲁棒纹理识别的这三个要求。实验结果表明,OS-GLAC对不同金属表面织构类型的分离具有较强的鲁棒性。此外,我们观察到OS-GLAC不仅可用于金属表面的纹理识别,而且当与预训练的深度学习特征相结合时,也可用于一般纹理识别,因为这两个特征捕获了互补信息。实验结果表明,这种OS-GLAC组合在KTH-TIP-2a、kth - tip -2b和FMD这三个已建立的通用纹理数据集上取得了具有竞争力的结果。
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Texture Recognition on Metal Surface using Order-Less Scale Invariant GLAC
Inspection of metal surface textures using computer vision and machine learning techniques plays an important role in Automated Visual Inspection (AVI) systems. Texture recognition on metal surface is challenging because the characteristics of each texture type are dependent on the properties of the metal surface when captured under different lighting conditions. Since these textures have no obvious repetitive patterns like general textures, this results in high intra-class diversities. Prior knowledge has shown that surface properties such as surface curvature and depth are discriminant to different texture types on metal surface. Since scale, shapes and location of textures within the same type are not fixed, scale property and spatial ordering information are less important for differentiating between texture types. There-fore, surface property, scale invariance and order-less property should be considered when exploring a suitable image feature for metal surface texture recognition. This paper proposes Order-less Scale Invariant Gradient Local Auto-Correlation (OS-GLAC) which meets all three requirements for robust texture recognition. The experiment results show that OS-GLAC is robust to separate different metal surface texture types. In addition, we observed that OS-GLAC is not only useful for texture recognition on metal surface but also for general texture recognition when combined with pre-trained deep learning features as these two features capture complimentary information. The experiment results show that such a combination of OS-GLAC achieves competitive results on three well-established general texture datasets i.e., KTH-TIP-2a, KTH-TIPS-2b and FMD.
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