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Convolutional Neural Networks for Underwater Pipeline Segmentation using Imperfect Datasets

机译:使用不完美数据集进行水下管道分割的卷积神经网络

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In this paper, we investigate a solution to the problem of underwater pipeline segmentation, based on an unbalanced dataset generated by a deterministic algorithm which employs computer vision techniques. We use manually selected masks to train two types of neural networks, U-Net and Deeplabv3+, to solve the same semantic segmentation task. We show that neural networks are able to learn from imperfect datasets, artificially generated by other algorithms. Deep convolutional architectures outperform the algorithm based on computer vision techniques. In order to find the best model, a comparison was made between the two architectures, thereby concluding that Deeplabv3+ achieves better results and features robust operation under adverse environmental conditions.
机译:在本文中,我们研究了基于采用计算机视觉技术的确定性算法生成的不平衡数据集来调查水下管道分割问题的解决方案。我们使用手动选定的掩模来培训两种类型的神经网络,U-Net和Deeplabv3 +,以解决相同的语义分段任务。我们表明神经网络能够从不完美的数据集中学习,由其他算法人工生成。基于计算机视觉技术的深度卷积架构优于算法。为了找到最佳模型,在两种架构之间进行了比较,从而得出结论,Deeplabv3 +在不利环境条件下实现了更好的结果,并具有鲁棒操作。

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