Research on Image Registration and Mosaic Based on Vector Similarity Matching Principle

Jiangwei Qin, Jian-feng Yang, Bin Xue, Fan Bu
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引用次数: 3

Abstract

Scale invariant feature transform (SIFT) is a better corner extraction algorithm, but there are still mismatching problems in the feature matching step. a new matching principle based on vector similarity is proposed and then it is compared with traditional matching principle. Firstly, the matching feature points are detected by the new principle. Mismatching points are further removed by using the mutual mapping theory. Secondly, transformation matrix is calculated by random sample consensus (RANSAC). Furthermore, the matrix is optimized by Levenberg-Marquardt algorithm (L-M). Lastly, image mosaic is realized by image fusion. Experimental results indicate that compared with traditional matching principle, new matching principle has improved matching accuracy. It is able to apply new principle to image registration and image mosaic.
基于向量相似匹配原理的图像配准与拼接研究
尺度不变特征变换(SIFT)是一种较好的角点提取算法,但在特征匹配步骤中仍然存在不匹配问题。提出了一种新的基于向量相似度的匹配原则,并与传统的匹配原则进行了比较。首先,利用新原理检测匹配的特征点;利用互映射理论进一步去除不匹配点。其次,采用随机样本共识法(RANSAC)计算变换矩阵。采用Levenberg-Marquardt算法(L-M)对矩阵进行优化。最后,通过图像融合实现图像拼接。实验结果表明,与传统匹配原则相比,新匹配原则提高了匹配精度。它能够将新的原理应用到图像配准和图像拼接中。
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