This paper proposes a method that combines the style transfer technique and the learned descriptor to enhance the matching performances of underwater sonar images. In the field of underwater vision, sonar is currently the most effective long-distance detection sensor, it has excellent performances in map building and target search tasks. However, the traditional image matching algorithms are all developed based on optical images. In order to solve this contradiction, the style transfer method is used to convert the sonar images into optical styles, and at the same time, the learned descriptor with excellent expressiveness for sonar images matching is introduced. Experiments show that this method significantly enhances the matching quality of sonar images. In addition, it also provides new ideas for the preprocessing of underwater sonar images by using the style transfer approach.
翻译:本文提出一种方法,将风格传输技术与学习到的描述符结合起来,以提高水下声纳图像的匹配性能。 在水下视觉领域,声纳是目前最有效的长距离探测传感器,在地图建设和目标搜索任务方面表现优异。然而,传统的图像匹配算法都是基于光学图像开发的。为了解决这一矛盾,采用了风格传输方法将声纳图像转换成光学风格,同时引入了具有优秀声纳图像匹配清晰度的学术描述符。实验显示,这一方法极大地提高了声纳图像的匹配性。此外,它也为利用风格传输方法预处理水下声纳图像提供了新的想法。