Learning the parameters for a gradient-based approach to image segmentation using cultural algorithms

R. Reynolds, S. R. Rolnick
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引用次数: 3

Abstract

There are two basic approaches to image segmentation, region-based and neighborhood-based. Region-based approaches require less a priori knowledge about the scene than neighborhood-based approaches but are computationally more expensive. In cases where there is little prior knowledge about properties of the image, one is often forced to use region growing approaches. In this paper the authors use cultural algorithms, a form of evolutionary computation based upon principles of cultural evolution, as the basis for learning the parameters for a neighborhood-based approach to image segmentation from the results of a region-growing approach. Specifically, parameters for a differential gradient method utilizing the Sobel operator are learned from the results of a region growing approach. The prototype is applied to a sequence of real world images, taken from archaeological excavations of a prehistoric site in order to extract spatial activity areas in the site. A region-growing approach is applied first to the images, and then a cultural algorithm is used to extract the parameters for use by a gradient method for those images. The resulting performance of the gradient method produced a correspondence of over 95% with that of the original.<>
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学习使用文化算法的基于梯度的图像分割方法的参数
图像分割有两种基本方法:基于区域的和基于邻域的。与基于邻域的方法相比,基于区域的方法对场景的先验知识要求更少,但计算成本更高。在很少有关于图像属性的先验知识的情况下,人们经常被迫使用区域增长方法。在本文中,作者使用文化算法,一种基于文化进化原理的进化计算形式,作为从区域增长方法的结果中学习基于邻域的图像分割方法的参数的基础。具体而言,利用Sobel算子的微分梯度方法的参数是从区域增长方法的结果中学习到的。该原型应用于一系列真实世界的图像,这些图像取自史前遗址的考古发掘,以提取遗址中的空间活动区域。首先对图像应用区域增长方法,然后使用文化算法提取参数,然后使用梯度方法对这些图像进行处理。结果表明,梯度法的性能与原始算法的一致性超过95%。
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