Efficient object matching using partial dominant orientation descriptor

Abdessamad Elboushaki, Rachida Hannane, K. Afdel, L. Koutti
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引用次数: 1

Abstract

This paper presents a method for extracting a new feature descriptor, named Partial Dominant Orientation Descriptor (PDOD), which can be used to perform reliable matching between objects with similar as well as different textures. The object is represented by a set of key locations of stable points using Difference of Gaussian, so that the matching can proceed successfully despite changes in viewpoint, scale, illumination, and distortions. The proposed descriptor at feature point takes into account the position and partially computes the dominant orientations of other key locations relative to this point, thus, offering a global discriminative characterization. The correspondence between two objects is performed by matching each key location in the first object independently to the set of key locations extracted from the second object using Euclidian distance. The one with the smallest distance is picked as the best candidate match. The descriptor is highly distinctive, and provides robust matching across a substantial range of rotation variance, change in textures, and object deformation. Our experiments on KONKLAB public dataset indicate that our method outperforms other benchmarks such as SIFT, PCA-SIFT and SURF matching algorithms.
使用部分主导方向描述符的有效对象匹配
本文提出了一种提取新的特征描述符的方法,即局部优势方向描述符(PDOD),该特征描述符可用于相似和不同纹理的物体之间的可靠匹配。利用高斯差分法将目标用一组稳定点的关键位置表示出来,使得无论视点、尺度、光照和畸变如何变化,匹配都能顺利进行。所提出的特征点描述符考虑了位置,并部分计算了其他关键位置相对于该点的主导方向,从而提供了全局判别表征。两个对象之间的对应是通过使用欧几里德距离将第一个对象中的每个关键位置独立地与从第二个对象中提取的关键位置集进行匹配来实现的。选择距离最小的一个作为最佳候选匹配。描述符是高度独特的,并提供了大量的旋转变化,纹理变化和对象变形的鲁棒匹配。我们在KONKLAB公共数据集上的实验表明,我们的方法优于其他基准匹配算法,如SIFT, PCA-SIFT和SURF。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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