首页> 外文会议> >Classification of Underwater Color Images with Applications in the Study of Deep Coral Reefs
【24h】

Classification of Underwater Color Images with Applications in the Study of Deep Coral Reefs

机译:水下彩色图像的分类及其在深珊瑚礁研究中的应用

获取原文

摘要

Coral Reefs ecosystems have been impacted by natural and anthropogenic effects resulting in a decline of coral communities worldwide. This decline in coral reefs has an economical impact in tourist areas, and marine ecosystems. Coral reef scientists and resource managers monitor and map coral reefs communities manually. Automated techniques are nonexistence, especially in deep waters where the absorption and scattering properties of the water do not allow the use of satellites. In these cases, other imaging platforms like autonomous underwater vehicles (AUV) are needed. This work presents a prototype classification algorithm with applications in the study of deep coral reefs taken by the SeaBED (AUV) at the Hind Bank Marine Conservation District (MCD), south of Saint Thomas, U.S. Virgin Islands. Because of light conditions, the images acquired by this AUV have low contrast, are very noisy, and are extremely rich in both spatial variability and texture, making the automated classification a very difficult task [7, 8]. The classification algorithm developing in this research use the Local Homogeneity Coefficient segmentation algorithm [7, 8] as first stage to find the different regions of interest in the images like corals, bare substrate, and sand among others classes. Combining a pixel by pixel Euclidean classification in each region with some texture features the classification of each region is performed. Finally, the results of the algorithm are validated with the traditional manual classification done for this type of applications.
机译:珊瑚礁生态系统已受到自然和人为影响的影响,导致全世界珊瑚群落的减少。珊瑚礁的下降对旅游区和海洋生态系统产生了经济影响。珊瑚礁科学家和资源管理人员手动监视和绘制珊瑚礁群落图。自动化技术是不存在的,尤其是在深水中,因为水的吸收和散射特性不允许使用人造卫星。在这些情况下,需要其他成像平台,如自动水下航行器(AUV)。这项工作提出了一种原型分类算法,该算法将用于研究美属维尔京群岛圣托马斯南部的欣德河岸海洋保护区(MCD)的SeaBED(AUV)拍摄的深层珊瑚礁。由于光线条件,这种AUV采集的图像对比度低,噪声很大,并且在空间可变性和纹理方面都非常丰富,这使自动分类成为一项非常困难的任务[7,8]。在本研究中开发的分类算法使用局部同质性系数分割算法[7,8]作为第一步来找到图像中感兴趣的不同区域,例如珊瑚,裸露的基底和沙子等类别。将每个区域中的一个像素的欧几里得分类与一些纹理特征相结合,执行每个区域的分类。最后,使用针对此类应用程序进行的传统手动分类来验证算法的结果。

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