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Relaxation based matching of clusters of keypoints from scale-invariant feature transform on multiple frames of buildings

机译:基于松弛的关键点聚类匹配来自建筑物多帧上尺度不变特征的变换

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In recognition of urban buildings, conventional SIFT-based matching is highly prone to error when a large number of similar keypoints are extracted from the repetitive structure of a building. We propose a relaxation based matching of clusters of SIFT keypoints, followed by multi-frame verification. Two-step mean shift clustering is successful in grouping semantically homogeneous keypoints into a cluster. Relaxation based matching significantly enhances the reliability of correspondence, by preserving the structural consistency over matched clusters. The correctness of cluster matching can be verified by multi-frame matching. We tested the proposed methods on several images of buildings of the University of Seoul and achieved significant improvement in precision ratio and recall ratio.
机译:在识别城市建筑物时,当从建筑物的重复结构中提取大量相似的关键点时,基于SIFT的常规匹配非常容易出错。我们提出基于松弛的SIFT关键点簇的匹配,然后进行多帧验证。两步均值漂移聚类成功地将语义上均一的关键点分组到一个聚类中。通过保留匹配簇上的结构一致性,基于松弛的匹配显着提高了对应的可靠性。聚类匹配的正确性可以通过多帧匹配来验证。我们在首尔大学的几幅建筑物图像上测试了所提出的方法,并在准确率和查全率方面取得了显着提高。

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