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首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >Accumulated and aggregated shifting of intensity for defect detection on micro 3D textured surfaces
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Accumulated and aggregated shifting of intensity for defect detection on micro 3D textured surfaces

机译:微3D纹理表面上缺陷检测强度累积和簇生换档

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摘要

Micro three-dimensional (3D) textured surfaces are being designed for a lot of electronic products to improve appearance and user experience. Defects are, however, inevitably caused during industrial manufacture. They are difficult to be detected due to low contrast and unclear boundary between defect and irregular textured defect-free region. To achieve robust defect detection on micro 3D textured surfaces of industrial products, this paper proposes a probabilistic saliency framework with a novel feature enhancement mechanism. Two saliency features, absolute intensity deviation and local intensity aggregation, are designed to represent the pixel-level initial saliency. Based on these two features, an iterative framework, named accumulated and aggregated shifting of intensity (AASI), is proposed to shift the intensity of each pixel according to its saliency. Finally, all the pixels are classified as defective or defect-free by fitting the AASI iteration results to two statistical models, an exponential model and a linear model. Importantly, AASI procedure is unsupervised and training-free, so it does not rely on huge training data with time-consuming manual labels. Experimental results on a large-scale image dataset taken from real-world industrial product surfaces demonstrate that the proposed approach achieves state-of-the-art accuracy in industrial applications. (C) 2019 Elsevier Ltd. All rights reserved.
机译:微型三维(3D)纹理表面是为大量电子产品设计的,以改善外观和用户体验。然而,在工业制造期间不可避免地引起缺陷。由于缺陷和不规则纹理缺陷区域之间的低对比度和阴影,难以检测到它们难以检测。为了实现工业产品的微3D纹理表面上的稳健缺陷检测,本文提出了一种具有新颖特征增强机制的概率性显着框架。旨在表示像素级初始显着性的两个显着性功能,绝对强度偏差和局部强度聚集。基于这两个特征,提出了一种迭代框架,名为强度(AASI)的累积和聚合移位,以根据其显着性移动每个像素的强度。最后,通过将AASI迭代结果拟合到两个统计模型,指数模型和线性模型来归类为无缺陷或无缺陷。重要的是,AASI程序无监督和无培训,因此它不依赖于耗时的手动标签的巨大培训数据。从真实的世界工业产品表面拍摄的大型图像数据集上的实验结果表明,该方法在工业应用中实现了最先进的准确性。 (c)2019年elestvier有限公司保留所有权利。

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