基于网孔分组图像处理的网箱网损检测

Jung-Ho Kang, Tatiana Keruzel, Uk-Jin Baek, Kyung-Chang Lee
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引用次数: 0

摘要

本文提出了一种网孔分组算法,该算法通过比较相邻网孔的面积来检测受损区域,从而检测出摇摆鱼笼网中网的受损部分。进行图像预处理,从水下净图像中提取净形状,并将其转换为二值图像。将二值化后的网图像中的每个网孔分配一个编号,将与参考网孔相邻的网孔分组为一组。这些分组的网孔然后根据它们的面积大小按升序排列。然后,如果该组中第一最宽孔的面积与第二最宽孔的面积之差大于对应组的平均孔面积,则检测为损坏。在600张图像的数据集上对净损伤检测算法进行了评估,并实现了以下性能指标:准确率0.86,精密度0.86,召回率0.88。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Detection of Fish Cage Net Damage Using Image Processing with Mesh-Hole Grouping
In this paper, we propose a Mesh-hole grouping algorithm that detects damaged areas by comparing the area between neighboring net holes in order to detect damaged parts of net that occurs in a wagging fish cage net. An image pre-processing is performed to extract the net shape from the underwater net image and convert it into a binary image. Each net hole in the binarized net image is assigned a number, and the net holes adjacent to the reference net hole are grouped together into one group. These grouped net holes are then arranged in ascending order based on their area size. Then, if the difference between the area of the first widest hole and the area of the second widest hole in the group is greater than the average hole area of the corresponding group, it is detected as damaged. The net damage detection algorithm was evaluated on a dataset of 600 images and achieved the following performance metrics: accuracy 0.86, precision 0.86, and recall 0.88.
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