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Asymmetric Correlation: A Noise Robust Similarity Measure for Template Matching

机译:不对称相关:模板匹配的噪声鲁棒相似性度量

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摘要

We present an efficient and noise robust template matching method based on asymmetric correlation (ASC). The ASC similarity function is invariant to affine illumination changes and robust to extreme noise. It correlates the given non-normalized template with a normalized version of each image window in the frequency domain. We show that this asymmetric normalization is more robust to noise than other cross correlation variants, such as the correlation coefficient. Direct computation of ASC is very slow, as a DFT needs to be calculated for each image window independently. To make the template matching efficient, we develop a much faster algorithm, which carries out a prediction step in linear time and then computes DFTs for only a few promising candidate windows. We extend the proposed template matching scheme to deal with partial occlusion and spatially varying light change. Experimental results demonstrate the robustness of the proposed ASC similarity measure compared to state-of-the-art template matching methods.
机译:我们提出了一种基于不对称相关性(ASC)的高效且鲁棒的模板匹配方法。 ASC相似度函数对于仿射照度变化是不变的,并且对于极端噪声具有鲁棒性。它将给定的非标准化模板与频域中每个图像窗口的标准化版本相关联。我们表明,这种非对称归一化比其他互相关变量(如相关系数)对噪声的鲁棒性更高。 ASC的直接计算非常慢,因为需要为每个图像窗口分别计算DFT。为了使模板匹配有效,我们开发了一种更快的算法,该算法以线性时间执行预测步骤,然后仅针对几个有希望的候选窗口计算DFT。我们扩展了提出的模板匹配方案,以处理部分遮挡和空间变化的光线变化。实验结果证明了与最新的模板匹配方法相比,所提出的ASC相似性度量的鲁棒性。

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