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A Supervised Figure-Ground Segmentation Method Using Genetic Programming

机译:基于遗传程序的有监督地物分割方法

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Figure-ground segmentation is an important preprocessing phase in many computer vision applications. As different classes of objects require specific segmentation rules, supervised (or top-down) methods, which learn from prior knowledge of objects, are suitable for figure-ground segmentation. However, existing top-down methods, such as model-based and fragment-based ones, involve a lot of human work. As genetic programming (GP) can evolve computer programs to solve problems automatically, it requires less human work. Moreover, since GP contains little human bias, it is possible for GP-evolved methods to obtain better results than human constructed approaches. This paper develops a supervised GP-based segmentation system. Three kinds of simple features, including raw pixel values, six dimension and eleven dimension grayscale statistics, are employed to evolve image segmentors. The evolved segmentors are tested on images from four databases with increasing difficulty, and results are compared with four conventional techniques including thresholding, region growing, clustering, and active contour models. The results show that GP-evolved segmentors perform better than the four traditional methods with consistently good results on both simple and complex images.
机译:图形地面分割是许多计算机视觉应用程序中的重要预处理阶段。由于不同类别的对象需要特定的分割规则,因此,从对象的先验知识中学习的监督(或自上而下)方法适用于图形背景分割。但是,现有的自上而下的方法(例如基于模型的方法和基于片段的方法)涉及大量的人工工作。由于基因编程(GP)可以进化计算机程序来自动解决问题,因此所需的人力更少。此外,由于GP几乎没有人为偏见,因此GP进化的方法有可能比人工构建的方法获得更好的结果。本文开发了一种基于监督的基于GP的分割系统。包括原始像素值,六维和十一维灰度统计在内的三种简单特征可用于演化图像分割器。不断发展的分割器在难度越来越大的四个数据库上的图像上进行测试,并将结果与​​四种常规技术(包括阈值化,区域增长,聚类和主动轮廓模型)进行比较。结果表明,由GP演化的分割器在四种简单和复杂图像上的性能均优于四种传统方法,并且始终具有良好的效果。

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