首页> 外文期刊>Soft computing: A fusion of foundations, methodologies and applications >Evolving semantic object segmentation methods automatically by genetic programming from images and image processing operators
【24h】

Evolving semantic object segmentation methods automatically by genetic programming from images and image processing operators

机译:通过从图像和图像处理操作员的遗传编程自动演变语义对象分割方法

获取原文
获取原文并翻译 | 示例
           

摘要

Even though numerous segmentation methods exist, the requirement of prior knowledge or parameter tuning makes them restricted to limited image domains. Without predefining solution models, genetic programming (GP) is able to solve complex problems by evolving computer programs automatically. In this paper, three new GP-based methods are designed to evolve segmentation algorithms automatically from images and primitive image processing operators (e.g., filters and histogram equalization). Specifically, a strongly typed representation, the cooperative coevolution technique and a two-stage evolution are introduced in GP, respectively, to form three new methods that can evolve solutions to conduct image preprocessing, segmentation and postprocessing automatically. The new methods are termed as StronglyGP, CoevoGP and TwostageGP, and standard GP-based algorithm (StandardGP) is employed as a reference method. The proposed methods are tested on two complicated datasets (i.e., Weizmann and Pascal datasets), which contain high variations in both objects and backgrounds. The results show that StronglyGP and StandardGP can evolve effective segmentors for the given complex segmentation tasks, while CoevoGP and TwostageGP perform worse than StronglyGP and StandardGP, which may be caused by the overfitting problem in deriving postprocessing solutions. In addition, compared with StandardGP, StronglyGP achieves better segmentation performance with smaller solution sizes. Moreover, compared with four widely used segmentation methods, StronglyGP and StandardGP can produce satisfactory results consistently on both Weizmann and Pascal datasets.
机译:尽管存在许多分割方法,但先验知识或参数调谐的要求使它们仅限于有限的图像域。在没有预定义的解决方案模型的情况下,遗传编程(GP)能够通过自动演变计算机程序来解决复杂问题。在本文中,设计了三种基于GP的基于GP的方法,用于自动从图像和原始图像处理运算符(例如,过滤器和直方图均衡)中自动地发展分割算法。具体地,在GP中分别在GP中引入了强类型的表示,协作共同努力技术和两级演进,以形成三种新方法,该方法可以发展溶液以自动地进行图像预处理,分段和后处理。新方法称为强大的GP,COEVOGP和TWOSTAGEGP,标准GP的算法(StandardGP)用作参考方法。所提出的方法在两个复杂的数据集(即Weizmann和Pascal DataSets)上测试,其包含对象和背景的高变化。结果表明,强势谷物和标准格可以向给定的复杂分割任务演变有效的分段器,而CoEvogp和TwoStagegp则比强度和标准格的差,这可能是由衍生后处理解决方案的过度问题引起的。此外,与StandardGP相比,强大的功率均采用较小的解决方案尺寸实现了更好的分段性能。此外,与四种广泛使用的分割方法相比,强大的功率和标准化可在Weizmann和Pascal Datasets上一致地产生令人满意的结果。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号