...
首页> 外文期刊>Biomedical signal processing and control >Improving the segmentation of magnetic resonance brain images using the LSHADE optimization algorithm
【24h】

Improving the segmentation of magnetic resonance brain images using the LSHADE optimization algorithm

机译:利用LSHADE优化算法改善磁共振大脑图像的分割

获取原文
获取原文并翻译 | 示例
           

摘要

Segmentation is an essential preprocessing step in techniques for image analysis. The automatic segmentation of brain magnetic resonance imaging has been exhaustively investigated since the accurate use of this kind of methods permits the diagnosis and identification of several diseases. Thresholding is a straightforward and efficient technique for image segmentation. Nonetheless, thresholding based approaches tend to increase the computational cost based on the number of thresholds used for the segmentation. Therefore, metaheuristic algorithms are an important tool that helps to find the optimal values in multilevel thresholding. The adaptive differential evolution, based in numerous successes through history, with linear population size reduction (LSHADE) is a robust metaheuristic algorithm that efficiently solves numerical optimization problems. The main advantage of LSHADE is its capability to adapt its internal parameters according to prior knowledge acquired along the evolutionary process. Meanwhile, the continuous reduction of the population improves the exploitation process. This article presents a multilevel thresholding approach based on the LSHADE method for the segmentation of magnetic resonance brain imaging. The proposed method has been tested using three groups of reference images- the first group consists of grayscale standard benchmark images, the second group consists of magnetic resonance T2-weighted brain images, and the third group is formed by images of unhealthy brains affected by tumors. In turn, the performance of the intended approach was compared with distinct metaheuristic algorithms and machine learning methods. The statistically verified results demonstrate that the suggested approach improves consistency and segmentation quality.
机译:分段是图像分析技术的基本预处理步骤。由于这种方法的准确使用允许诊断和鉴定几种疾病,因此已经详细研究了脑磁共振成像的自动分割。阈值是一种用于图像分割的直接和有效的技术。尽管如此,基于阈值的方法倾向于基于用于分割的阈值的数量来提高计算成本。因此,成面型算法是一个重要的工具,有助于找到多级阈值下的最佳值。基于历史的众多成功的自适应差分演进,线性群体尺寸减少(LSHADE)是一种稳健的成分识别算法,可有效解决数值优化问题。 LSHADE的主要优点是其能力根据沿着进化过程所获取的先验知识来调整其内部参数。同时,人口的连续减少改善了开发过程。本文基于磁共振脑成像分割的LSHADE方法提供了一种多级阈值方法。已经使用三组参考图像测试了所提出的方法 - 第一组由灰度标准基准图像组成,第二组由磁共振T2加权脑图像组成,第三组由受肿瘤影响的不健康大脑的图像形成。反过来,将预期方法的性能与不同的成群质算法和机器学习方法进行比较。统计学上验证的结果表明,建议的方法提高了一致性和分割质量。

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