首页> 外文期刊>Journal of the Optical Society of America, A. Optics, image science, and vision >Robust ellipse detection based on hierarchical image pyramid and Hough transform
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Robust ellipse detection based on hierarchical image pyramid and Hough transform

机译:基于分层图像金字塔和霍夫变换的鲁棒椭圆检测

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摘要

In this research we propose a fast and robust ellipse detection algorithm based on a multipass Hough transform and an image pyramid data structure. The algorithm starts with an exhaustive search on a low-resolution image in the image pyramid using elliptical Hough transform. Then the image resolution is iteratively increased while the candidate ellipses with higher resolution are updated at each step until the original image resolution is reached. After removing the detected ellipses, the Hough transform is repeatedly applied in multiple passes to search for remaining ellipses, and terminates when no more ellipses are found. This approach significantly reduces the false positive error of ellipse detection as compared with the conventional randomized Hough transform method. The analysis shows that the computing complexity of this algorithm is THETA(n~(5/2)), and thus the computation time and memory requirement are significantly reduced. The developed algorithm was tested with images containing various numbers of ellipses. The effects of noise-to-signal ratio combined with various ellipse sizes on the detection accuracy were analyzed and discussed. Experimental results revealed that the algorithm is robust to noise. The average detection accuracies were all above 90percent for images with less than seven ellipses, and slightly decreased to about 80percent for images with more ellipses. The average false positive error was less than 2percent.
机译:在这项研究中,我们提出了一种基于多遍霍夫变换和图像金字塔数据结构的快速且鲁棒的椭圆检测算法。该算法首先使用椭圆霍夫变换对图像金字塔中的低分辨率图像进行详尽搜索。然后,迭代地提高图像分辨率,同时在每个步骤中更新具有更高分辨率的候选椭圆,直到达到原始图像分辨率为止。删除检测到的椭圆后,将霍夫变换多次重复应用以搜索剩余的椭圆,并在找不到更多椭圆时终止。与传统的随机霍夫变换方法相比,该方法显着减少了椭圆检测的误报误差。分析表明,该算法的计算复杂度为THETA(n〜(5/2)),从而大大减少了计算时间和内存需求。使用包含各种椭圆形的图像对开发的算法进行了测试。分析并讨论了信噪比和各种椭圆尺寸对检测精度的影响。实验结果表明,该算法对噪声具有鲁棒性。对于椭圆少于七个的图像,平均检测精度均高于90%,对于椭圆更多的图像,平均检测精度略微降低至约80%。平均误报率小于2%。

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