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An improved Normalized Cross Correlation algorithm for SAR image registration

机译:SAR图像配准的改进归一化递交算法

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This paper proposes a robust and fast matching method based on Normalized Cross Correlation (NCC) for Synthetic Aperture Radar (SAR) image matching. NCC is a robust algorithm in SAR image matching. Two main drawbacks of the NCC algorithm are the flatness of the similarity measure maxima, due to the self-similarity of the images, and the high computational complexity [1]. To tackle these two problems, we adopt the block partitioning strategy, texture feature analysis, and the Fast Fourier Transformation (FFT) algorithm and Integral Images to improve the performance of the conventional NCC algorithm. In the block partitioning strategy, we divide the template and the corresponding sub-window in the examined image into some sub-blocks, and there are several sub-blocks in the template, then we use texture features to increase the weight of sub-blocks which contain more terrain information in the template during the matching process, in this way we improve the flatness of the similarity measure maxima greatly. After that we use the FFT algorithm and Integral Images to speed up the proposed method, with the actual situation of our experiment we adopt the FFT and Integral Images based on the block partitioning strategy, thus we significantly reduce the number of computations required to carry out template matching based on the conventional NCC. Experimental results show that the proposed algorithm is more robust and faster than the conventional NCC algorithm.
机译:本文提出了一种基于归一化互相关(NCC)合成孔径雷达(SAR)图像匹配一个强大和快速的匹配方法。 NCC是SAR图像匹配强大的算法。在NCC算法中的两个主要缺点是该相似性度量最大值的平坦性,由于图像的自相似性,和高的计算复杂性[1]。为了解决这两个问题,我们采用了块分区策略,纹理特征分析,以及快速傅立叶变换(FFT)算法和积分图像,以提高传统NCC算法的性能。在块分区策略,我们把检查图像中的模板和相应的子窗口为若干子块,有几个子块模板,然后我们用结构特征,以提高子块的重量包含在匹配过程中模板的详细地形信息,这样我们提高相似度极大的平整度很大。我们使用的FFT算法和整体形象,加快所提出的方法,与我们实验的实际情况,我们采用FFT和积分图像基于块的分区策略,因此,我们显著减少计算次数后需要进行基于传统的NCC模板匹配。实验结果表明,该算法是更强大,比传统NCC算法快。

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