首页> 外文期刊>Ecology and Evolution >Using a multiscale image processing method to characterize the periodic growth patterns on scallop shells
【24h】

Using a multiscale image processing method to characterize the periodic growth patterns on scallop shells

机译:使用多尺度图像处理方法表征扇贝贝壳上的周期性生长模式

获取原文
           

摘要

Abstract The fine periodic growth patterns on shell surfaces have been widely used for studies in the ecology and evolution of scallops. Modern X-ray CT scanners and digital cameras can provide high-resolution image data that contain abundant information such as the shell formation rate, ontogenetic age, and life span of shellfish organisms. We introduced a novel multiscale image processing method based on matched filters with Gaussian kernels and partial differential equation (PDE) multiscale hierarchical decomposition to segment the small tubular and periodic structures in scallop shell images. The periodic patterns of structures (consisting of bifurcation points, crossover points of the rings and ribs, and the connected lines) could be found by our Space-based Depth-First Search (SDFS) algorithm. We created a MATLAB package to implement our method of periodic pattern extraction and pattern matching on the CT and digital scallop images available in this study. The results confirmed the hypothesis that the shell cyclic structure patterns encompass genetically specific information that can be used as an effective invariable biomarker for biological individual recognition. The package is available with a quick-start guide and includes three examples: http://mgb.ouc.edu.cnovegene/html/code.php .
机译:摘要贝壳表面的精细周期性生长规律已被广泛用于扇贝的生态学和进化研究。现代的X射线CT扫描仪和数码相机可以提供高分辨率的图像数据,其中包含丰富的信息,例如壳形成率,个体发育年龄和贝类生物的寿命。我们介绍了一种基于高斯核匹配滤波器和偏微分方程(PDE)多尺度层次分解的新型多尺度图像处理方法,以分割扇贝壳图像中的小管状和周期性结构。结构的周期性模式(由分叉点,环和肋的交叉点以及连接的线组成)可以通过我们的空基深度优先搜索(SDFS)算法找到。我们创建了一个MATLAB软件包,以在本研究中可用的CT和数字扇贝图像上实现我们的周期性模式提取和模式匹配方法。结果证实了以下假设:壳的环状结构模式包含遗传学上的特定信息,这些信息可以用作生物个体识别的有效不变生物标记。该软件包随快速入门指南一起提供,其中包括三个示例:http://mgb.ouc.edu.cnovegene/html/code.php。

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