Difference of Circles Feature Detector

Abdullah Hojaij, Adel H. Fakih, A. Wong, J. Zelek
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引用次数: 3

Abstract

Feature detection is a crucial step in many Computer Vision applications such as matching, tracking, visual odometry and object recognition, etc. Detecting robust features that are persistent, rotation-invariant, and quickly calculated is a major problem in computer vision. Feature detectors using the difference of Gaussian (DoG) are computationally expensive, however, if the DoG is used with image sub sampling at higher orders, the detectors become fast but their feature localization becomes inaccurate. Detectors based on difference of octagons (DoO) or difference of stars (DoS) algorithm are fast and localize the features accurately, but they are not rotation-invariant. This paper introduces a novel technique for the difference of circles (DoC) algorithm, used for feature detection, that is perfectly rotation-invariant and has the potential of being very fast through using circular integral images. The performance of DoC algorithm is compared with the difference of stars algorithm presented by 'Willow Garage'. The experiments conducted concentrate on the rotation-invariance property of DoC.
圆差特征检测器
特征检测是匹配、跟踪、视觉里程计和目标识别等计算机视觉应用的关键步骤。检测持久、旋转不变性和快速计算的鲁棒特征是计算机视觉中的主要问题。使用高斯差分法(DoG)的特征检测器计算量很大,但是,如果将DoG与高阶图像子采样一起使用,检测器速度很快,但特征定位不准确。基于八角形差(DoO)或星差(DoS)算法的检测器速度快,定位准确,但它们不是旋转不变性的。本文介绍了一种用于特征检测的圆差(DoC)算法的新技术,该算法具有完全的旋转不变性,并且通过使用圆形积分图像具有非常快的潜力。将DoC算法的性能与“柳树车库”提出的星差算法进行了比较。实验集中研究了DoC的旋转不变性。
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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