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On benchmarking non-blind deconvolution algorithms: A sample driven comparison of image de-blurring methods for automated visual inspection systems

机译:关于基准非盲解卷积算法:自动视觉检查系统的图像去模糊方法的样本驱动比较

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This paper discusses motion blur reduction in digital images as a pre-processing step for automated visual inspection (AVI) systems. It is described how impulse responses of prevalent inspection set-ups can be modelled for efficient image enhancement. Common criteria for deconvolution performance measurements are listed and the results of a competitive benchmark of 13 state-of-the-art non-blind deconvolution algorithms are presented. Covered topics are illustrated by the example of a real-world inspection system for automatic quality control in woven fabrics. To meet real-time requirements, the efficient implementation of two selected algorithms based on GPU hardware is presented.
机译:本文讨论减少数字图像中的运动模糊,将其作为自动视觉检查(AVI)系统的预处理步骤。描述了如何对流行的检查设置的冲激响应进行建模以实现有效的图像增强。列出了反卷积性能测量的通用标准,并提出了13种最新的非盲反卷积算法的竞争基准测试结果。涵盖的主题以机织织物自动质量控制的实际检查系统为例进行说明。为了满足实时要求,提出了两种基于GPU硬件的选定算法的有效实现。

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