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Segmentation of sonar imagery using convolutional neural networks and Markov random field

机译:使用卷积神经网络和马尔可夫随机字段分割声纳图像

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摘要

In this paper, we present a novel method incorporating convolutional neural networks (CNN) into Markov random field (MRF) to automatically segment side scan sonar (SSS) images into object-highlight, object-shadow and sea-bottom reverberation areas. As a widely used ocean survey sensor, SSS provides high-resolution maps of the seafloor. Automatically segmenting SSS in real time can assist the navigation and path-planning of autonomous underwater vehicles. However, for the speckle noise and intensity inhomogeneity in the SSS images, it is difficult to find a robust SSS segmentation method. These facts motivate us to explore efficient CNN architectures to solve these problems. For pixel-level SSS segmentation, to use the context information and the details around a central pixel simultaneously, the CNN with multi-scale inputs (MSCNN) is employed. Besides, to mitigate the impact of the class imbalance problem, two MSCNN training strategies are introduced, which are based on data augmentation and ensemble learning. Furthermore, to take into account the local dependencies of class labels, the results of MSCNN are used to initialize MRF to get the final segmentation maps. Experimental results on real SSS images reveal that the proposed segmentation method outperforms MRF, CNN and semantic segmentation methods such as fully convolutional network and Segnet in segmentation accuracy and generalization performance. Moreover, the efficiency of the proposed method is proved on retinal image dataset.
机译:在本文中,我们提出了一种将卷积神经网络(CNN)的新方法进入Markov随机字段(MRF),以自动将侧扫描声纳(SSS)图像分成对象 - 突出显示,对象阴影和海底混响区域。作为广泛使用的海洋调查传感器,SSS提供了海底的高分辨率地图。实时分割SSS可以帮助自动水下车辆的导航和路径规划。然而,对于SSS图像中的散斑噪声和强度不均匀性,很难找到一个稳健的SSS分段方法。这些事实激励我们探索有效的CNN架构来解决这些问题。对于像素级SSS分割,为了同时使用上下文信息和中心像素周围的细节,采用具有多尺度输入(MSCNN)的CNN。此外,为了减轻类别不平衡问题的影响,介绍了两个MSCNN培训策略,基于数据增强和集合学习。此外,要考虑类别标签的本地依赖项,MSCNN的结果用于初始化MRF以获取最终的分段映射。真实SSS图像上的实验结果表明,所提出的分割方法优于MRF,CNN和语义分割方法,例如完全卷积网络和SEGNET在分割精度和泛化性能。此外,在视网膜图像数据集上证明了所提出的方法的效率。

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