首页> 外文会议>Conference on image processing: Algorithms and systems VII; 20090119-20, 22; San Jose, CA(US) >Efficient Detection of Ellipses from an Image by a Guided Modified RANSAC
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Efficient Detection of Ellipses from an Image by a Guided Modified RANSAC

机译:引导式修改后的RANSAC从图像中有效检测椭圆

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摘要

In this paper, we propose a novel ellipse detection method which is based on a modified RANSAC, with automatic sampling guidance from the edge orientation difference curve. Hough Transform family is one of the most popular and methods for shape detection, but the Standard Hough Transform loses its computation efficiency if the dimension of the parameter space gets high. Randomized Hough Transform, an improved version of Standard Hough Transform has difficulty in detecting shapes from complicated, cluttered scenes because of its random sampling process. As a pre-process for random selection of five pixels to be used to build the ellipse's equation, we propose a two-step algorithm: (1) region segmentation and contour detection by mean shift algorithm (2) contour splitting based on the edge orientation difference curve obtained from the contour of each region. In each contour segment obtained by step (2), 5 pixels are randomly selected and the modified RANSAC is applied to the 5 pixels so that an accurate ellipse model is obtained. Experimental result show that the proposed method can achieve high accuracies and low computation cost in detecting multiple ellipses from an image.
机译:在本文中,我们提出了一种新的椭圆检测方法,该方法基于改进的RANSAC,并从边缘方向差异曲线自动引导采样。霍夫变换家族是用于形状检测的最流行的方法之一,但是如果参数空间的维数变大,标准霍夫变换将失去其计算效率。随机霍夫变换是标准霍夫变换的改进版本,由于其随机采样过程,很难从复杂,混乱的场景中检测形状。作为随机选择要用于构建椭圆方程的五个像素的预处理,我们提出了两步算法:(1)区域分割和均值漂移算法进行轮廓检测(2)基于边缘方向的轮廓分割从每个区域的轮廓获得的差异曲线。在通过步骤(2)获得的每个轮廓段中,随机选择5个像素,并且将修改后的RANSAC应用于这5个像素,从而获得准确的椭圆模型。实验结果表明,该方法能够从图像中检测出多个椭圆,从而达到较高的准确度和较低的计算成本。

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