Enhancing the Effectiveness of Local Descriptor Based Image Matching

Md Tahmid Hossain, S. Teng, Dengsheng Zhang, Suryani Lim, Guojun Lu
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Abstract

Image registration has received great attention from researchers over the last few decades. SIFT (Scale Invariant Feature Transform), a local descriptor-based technique is widely used for registering and matching images. To establish correspondences between images, SIFT uses a Euclidean Distance ratio metric. However, this approach leads to a lot of incorrect matches and eliminating these inaccurate matches has been a challenge. Various methods have been proposed attempting to mitigate this problem. In this paper, we propose a scale and orientation harmony-based pruning method that improves image matching process by successfully eliminating incorrect SIFT descriptor matches. Moreover, our technique can predict the image transformation parameters based on a novel adaptive clustering method with much higher matching accuracy. Our experimental results have shown that the proposed method has achieved averages of approximately 16% and 10% higher matching accuracy compared to the traditional SIFT and a contemporary method respectively.
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增强基于局部描述子的图像匹配的有效性
在过去的几十年里,图像配准受到了研究人员的极大关注。SIFT (Scale Invariant Feature Transform)是一种基于局部描述子的图像配准和匹配技术。为了建立图像之间的对应关系,SIFT使用欧几里得距离比度量。然而,这种方法会导致大量不正确的匹配,消除这些不正确的匹配一直是一个挑战。为了缓解这个问题,已经提出了各种各样的方法。在本文中,我们提出了一种基于尺度和方向调和的剪枝方法,通过成功地消除不正确的SIFT描述符匹配来改进图像匹配过程。此外,我们的技术可以基于一种新的自适应聚类方法预测图像变换参数,具有更高的匹配精度。实验结果表明,与传统SIFT和现代SIFT相比,该方法的平均匹配精度分别提高了约16%和10%。
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