Genetic programming based image segmentation with applications to biomedical object detection

T. Singh, N. Kharma, M. Daoud, R. Ward
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引用次数: 23

Abstract

Image segmentation is an essential process in many image analysis applications and is mainly used for automatic object recognition purposes. In this paper, we define a new genetic programming based image segmentation algorithm (GPIS). It uses a primitive image-operator based approach to produce linear sequences of MATLAB® code for image segmentation. We describe the evolutionary architecture of the approach and present results obtained after testing the algorithm on a biomedical image database for cell segmentation. We also compare our results with another EC-based image segmentation tool called GENIE Pro. We found the results obtained using GPIS were more accurate as compared to GENIE Pro. In addition, our approach is simpler to apply and evolved programs are available to anyone with access to MATLAB®.
基于遗传规划的图像分割及其在生物医学目标检测中的应用
图像分割是许多图像分析应用中必不可少的一个过程,主要用于自动目标识别。本文定义了一种新的基于遗传规划的图像分割算法。它使用基于原始图像算子的方法来生成用于图像分割的MATLAB®代码的线性序列。我们描述了该方法的进化架构,并介绍了在生物医学图像数据库上测试该算法用于细胞分割后获得的结果。我们还将我们的结果与另一个基于ec的图像分割工具GENIE Pro进行了比较。我们发现与GENIE Pro相比,使用GPIS获得的结果更准确。此外,我们的方法更易于应用,并且任何可以访问MATLAB®的人都可以使用改进的程序。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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