An Effective Rotational Invariant Key-point Detector for Image Matching

Thanh Hong-Phuoc, L. Guan
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Abstract

Traditional detectors e.g. Harris, SIFT, SFOP... are known inflexible in different contexts as they solely target corners, blobs, junctions or other specific human-designed structures. To account for this inflexibility and additionally their unreliability under non-uniform lighting change, recently, a Sparse Coding based Key-point detector (SCK) relying on no human-designed structures and invariant to non-uniform illumination change was proposed. Yet, geometric transformations such as rotation are not considered in SCK. Thus, a novel Rotational Invariant SCK called RI-SCK is proposed in this paper. To make SCK rotational invariant, an effective use of multiple rotated versions of the original dictionary in the sparse coding step of SCK is proposed. A novel strength measure is also introduced for comparison of key-points across image pyramid levels if scale invariance is required. Experimental results on three public datasets have confirmed that significant gains in repeatability and matching score could be achieved by the proposed detector.
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一种有效的图像匹配旋转不变性关键点检测器
传统的探测器,如Harris, SIFT, sop…在不同的环境中是不灵活的,因为它们只针对角落、斑点、连接点或其他特定的人类设计的结构。针对这种不灵活性以及在非均匀光照变化下的不可靠性,最近提出了一种基于稀疏编码的不依赖人为设计结构且对非均匀光照变化不变性的关键点检测器(SCK)。然而,在SCK中不考虑旋转等几何变换。因此,本文提出了一种新的旋转不变量SCK - RI-SCK。为了使SCK具有旋转不变性,提出了在SCK稀疏编码步骤中有效利用原始字典的多个旋转版本的方法。在要求尺度不变性的情况下,还引入了一种新的强度度量来比较图像金字塔水平上的关键点。在三个公共数据集上的实验结果表明,该检测器在可重复性和匹配分数方面取得了显著的提高。
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