首页> 外文会议>International Conference on Computer Analysis of Images and Patterns(CAIP 2007); 20070827-29; Vienna(AT) >A Fast and Robust Ellipse Detection Algorithm Based on Pseudo-random Sample Consensus
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A Fast and Robust Ellipse Detection Algorithm Based on Pseudo-random Sample Consensus

机译:基于伪随机样本共识的快速鲁棒椭圆检测算法

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摘要

Ellipse is one of the most common features that appears in images. Over years in research, real-timing and robustness have been two very challenging problems aspects of ellipse detection. Aiming to tackle them both, we propose an ellipse detection algorithm based on pseudo-random sample consensus (PRANSAC). In PRANSAC we improve a contour-based ellipse detection algorithm (CBED), which was presented in our previous work. In addition, the parallel thinning algorithm is employed to eliminate useless feature points, which increases the time efficiency of our detection algorithm. In order to further speed up, a 3-point ellipse fitting method is introduced. In terms of robustness, a "robust candidate sequence" is proposed to improve the robustness performance of our detection algorithm. Compared with the state-of-the-art ellipse detection algorithms, experimental results based on real application images show that significant improvements in time efficiency and performance robustness of the proposed algorithm have been achieved.
机译:椭圆是出现在图像中的最常见功能之一。多年来的研究中,实时定时和鲁棒性一直是椭圆检测中两个非常具有挑战性的问题。为了解决这两个问题,我们提出了一种基于伪随机样本共识(PRANSAC)的椭圆检测算法。在PRANSAC中,我们改进了基于轮廓的椭圆检测算法(CBED),该算法已在我们之前的工作中提出。此外,采用并行稀疏算法来消除无用的特征点,从而提高了我们检测算法的时间效率。为了进一步加快速度,引入了三点椭圆拟合方法。在鲁棒性方面,提出了“鲁棒候选序列”以提高我们检测算法的鲁棒性。与最新的椭圆检测算法相比,基于实际应用图像的实验结果表明,该算法在时间效率和性能鲁棒性方面均取得了显着改善。

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