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Feature Matching Algorithm Based on SURF and Lowes Algorithm

机译:基于SURF和Lowes算法的特征匹配算法

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Feature extraction and matching of images is a key step in 3D reconstruction, and its accuracy directly affects the accuracy of 3D reconstruction. In this paper, aiming at the mismatch caused by the high similarity between screws, proposes a feature matching algorithm based on median filtering, Lowes algorithm and scale-invariant feature transform (SURF), called M-L-SURF algorithm. First, the median filtering is performed on the screw image to remove noise, then the SURF algorithm is used for feature extraction and matching, and finally, the Lowe's algorithm is used to filter the matching results. The results of experiments show that the M-L-SURF algorithm can achieve a 97.4% correct rate of screw image matching. The matching results obtained in this paper can be better applied to the subsequent work of 3D reconstruction.
机译:图像的特征提取和匹配是3D重建的关键步骤,其准确性直接影响3D重建的准确性。针对螺丝之间的高度相似性造成的不匹配,提出了一种基于中值滤波,Lowes算法和尺度不变特征变换(SURF)的特征匹配算法,称为M-L-SURF算法。首先,对螺旋图像进行中值滤波以去除噪声,然后使用SURF算法进行特征提取和匹配,最后使用Lowe算法对匹配结果进行滤波。实验结果表明,M-L-SURF算法可以达到97.4%的螺钉图像匹配正确率。本文获得的匹配结果可以更好地应用于3D重建的后续工作。

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