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A Scale-Invariant Keypoint Detector in Log-Polar Space

机译:对数极化空间中的尺度不变关键点检测器

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The scale-invariant feature transform (SIFT) algorithm is devised to detect keypoints via the difference of Gaussian (DoG) images. However, the DoG data lacks the high-frequency information, which can lead to a performance drop of the algorithm. To address this issue, this paper proposes a novel log-polar feature detector (LPFD) to detect scale-invariant blubs (keypoints) in log-polar space, which, in contrast, can retain all the image information. The algorithm consists of three components, viz. keypoint detection, descriptor extraction and descriptor matching. Besides, the algorithm is evaluated in detecting keypoints from the INRIA dataset by comparing with the SIFT algorithm and one of its fast versions, the speed up robust features (SURF) algorithm in terms of three performance measures, viz. correspondences, repeatability, correct matches and matching score.
机译:尺度不变特征变换(SIFT)算法设计用于通过高斯(DoG)图像的差异检测关键点。但是,DoG数据缺少高频信息,这可能导致算法性能下降。为了解决这个问题,本文提出了一种新颖的对数极特征检测器(LPFD),用于检测对数极空间中尺度不变的blub(关键点),相比之下,它可以保留所有图像信息。该算法包括三个部分,即。关键点检测,描述符提取和描述符匹配。此外,还通过与SIFT算法及其快速版本之一,从三个性能指标来衡量的快速鲁棒特征(SURF)算法进行比较,对该算法在从INRIA数据集中检测关键点的过程中进行了评估。对应性,可重复性,正确匹配和匹配分数。

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