ArcPSO: Ellipse detection method using particle swarm optimization and arc combination

Aprinaldi, I. Habibie, R. Rahmatullah, A. Kurniawan, A. Bowolaksono, W. Jatmiko, B. Wiweko
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引用次数: 6

Abstract

In this paper we present a technique for ellipse detection in digital images based on swarm intelligence algorithm and arc segment combination. The proposed method is then used as embryo quality scoring assessment during the first 24-48 hours since its morphological structure can be approximated by ellipse. The idea of the proposed algorithm are based on combining possible arcs for the ellipse shaped objects and try to find the best combinations using Particle Swarm Optimization technique to find the actual ellipse. The process involves detecting line segments in the image and then followed by arc segment extraction from lines to get potential elliptical arcs. The detection process is then guided by Particle Swarm Optimization (PSO) by utilizing the calculation of the fitness function from the arc segment that had been detected previously. The measurement results of proposed method are then compared with manual measurements. The experiment results were conducted on both synthetic data and real embryo images. Experiment results showed that the proposed method is better than several ellipse detection methods such as RHT, IRHT, and PSORHT to detect ellipses on the image. Another advantage of our proposed algorithm compared to the Hough Transform variants is that it can be used for multiple ellipse detection.
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ArcPSO:基于粒子群优化和圆弧组合的椭圆检测方法
本文提出了一种基于群体智能算法和圆弧段组合的数字图像椭圆检测技术。由于其形态结构可以用椭圆近似,因此该方法可用于胚胎前24-48小时的胚胎质量评分评估。该算法的思想是基于对椭圆形状物体的可能弧线进行组合,并利用粒子群优化技术寻找最佳组合来找到实际的椭圆。该方法首先检测图像中的线段,然后从线段中提取弧段,得到潜在的椭圆弧。然后利用粒子群算法(Particle Swarm Optimization, PSO),利用先前检测到的圆弧段计算适应度函数,指导检测过程。并将该方法的测量结果与人工测量结果进行了比较。实验结果是在合成数据和真实胚胎图像上进行的。实验结果表明,该方法在检测图像上的椭圆方面优于RHT、IRHT、PSORHT等几种椭圆检测方法。与霍夫变换变体相比,我们提出的算法的另一个优点是它可以用于多个椭圆检测。
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