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Fast normalized cross correlation for defect detection

机译:快速归一化互相关的缺陷检测

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摘要

Normalized cross correlation (NCC) has been used extensively for many machine vision applications, but the traditional normalized correlation operation does not meet speed requirements for time-critical applications. In this paper, we propose a fast NCC computation for defect detection. A sum-table scheme is utilized, which allows the calculations of image mean, image variance and cross-correlation between images to be invariant to the size of template window. For an image of size M x N and a template window of size m x n, the computational complexity of the traditional NCC involves 3 ·m·n·M·N additions/subtractions and 2·m·n·M·N multiplications. The required numbers of computations of the proposed sum-table scheme can be significantly reduced to only 18·M·N additions/subtractions and 2·M·N multiplications.
机译:归一化互相关(NCC)已被广泛用于许多机器视觉应用,但是传统的归一化相关运算无法满足对时间要求严格的应用的速度要求。在本文中,我们提出了一种用于缺陷检测的快速NCC计算。利用总和表方案,该方案允许图像均值,图像方差和图像之间的互相关的计算不依赖于模板窗口的大小。对于大小为M x N的图像和大小为m x n的模板窗口,传统NCC的计算复杂度涉及3·m·n·M·N加/减和2·m·n·M·N乘法。所提出的求和表方案的所需计算数量可以显着减少到仅18·M·N个加/减和2·M·N个乘法。

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