Towards automatic visual sea grass detection in underwater areas of ecological interest

A. Burguera, F. Bonin-Font, J. Lisani, A. Petro, G. Oliver
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引用次数: 19

Abstract

In areas of ecological interest, the detection and control of seaweed such as Posidonia Oceanica is usually performed by divers. Due to the limited capacity of the scuba tanks and the human security protocols, this task involves several short immersions leading to poor temporal and spatial data resolution. Thus, it is desirable to automate this task by means of underwater robots. This paper describes a method to autonomously detect Posidonia Oceanica in the imagery gathered by an underwater robot. The proposed approach uses a set of Gabor filters to characterize an image. This characterization is used to detect the regions containing seaweed by means of a Support Vector Machine. The experiments, conducted with an Autonomous Underwater Robot in several marine areas of Mallorca, show promising results towards the automated seafloor classification from extended video sequences.
水下生态区海草视觉自动检测研究
在具有生态意义的地区,通常由潜水员来检测和控制诸如Posidonia Oceanica之类的海藻。由于水肺储罐的容量有限和人类安全协议,这项任务涉及几次短暂的浸入,导致时间和空间数据分辨率较差。因此,利用水下机器人实现这项任务的自动化是很有必要的。本文介绍了一种水下机器人采集图像中海洋波西多尼亚的自主检测方法。提出的方法使用一组Gabor滤波器来表征图像。通过支持向量机,利用这一特征来检测含有海藻的区域。利用自主水下机器人在马略卡岛的几个海洋区域进行的实验显示,从扩展视频序列中自动进行海底分类的结果很有希望。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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