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Circle detection on images based on the Clonal Selection Algorithm (CSA)

机译:基于克隆选择算法(CSA)的图像圆检测

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Bio-inspired computing has demonstrated to be useful in several application areas. Over the last decade, new bio-inspired algorithms have emerged with applications for detection, optimisation and classification for use in computer vision tasks. On the other hand, automatic circle detection in digital images is considered an important and complex task for the computer vision community. Consequently, a tremendous amount of research has been devoted to find an optimal circle detector. This article presents an algorithm for the automatic detection of circular shapes from complicated and noisy images with no consideration of the conventional Hough transform principles. The proposed algorithm is based on newly developed Artificial Immune Optimisation (AIO) technique, known as the Clonal Selection Algorithm (CSA). The CSA is an effective method for searching and optimising following the Clonal Selection Principle (CSP) in the human immune system which generates a response according to the relationship between antigens (Ags), i.e. patterns to be recognised and antibodies (Abs), i.e. possible solutions. The algorithm uses the encoding of three points as candidate circles (x,y,r) over the edge image. An objective function evaluates if such candidate circles (Ab) are actually present in the edge image (Ag). Guided by the values of this objective function, the set of encoded candidate circles are evolved using the CSA so that they can fit to the actual circles on the edge map of the image. Experimental results over several synthetic as well as natural images with varying range of complexity validate the efficiency of the proposed technique with regard to accuracy, speed and robustness.
机译:生物启发式计算已证明在多个应用领域中很有用。在过去的十年中,出现了新的受生物启发的算法,并将其用于检测,优化和分类以用于计算机视觉任务。另一方面,数字图像中的自动圆圈检测被认为是计算机视觉界的一项重要而复杂的任务。因此,已经进行了大量的研究以找到最佳的圆形检测器。本文提出了一种在不考虑常规霍夫变换原理的情况下自动从复杂且有噪声的图像中检测圆形的算法。该算法基于最新开发的人工免疫优化(AIO)技术,称为克隆选择算法(CSA)。 CSA是一种在人体免疫系统中遵循克隆选择原则(CSP)进行搜索和优化的有效方法,该方法根据抗原(Ags)(即要识别的模式)与抗体(Abs)之间的关系产生响应解决方案。该算法使用三个点的编码作为边缘图像上的候选圆(x,y,r)。目标函数评估边缘图像(Ag)中是否实际存在此类候选圆(Ab)。在此目标函数的值的指导下,使用CSA演化了一组编码的候选圆,以便它们可以适合图像边缘图上的实际圆。在具有不同复杂度范围的几个合成图像和自然图像上的实验结果验证了所提技术在准确性,速度和鲁棒性方面的效率。

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