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Seabed Sediment Classification of Side-scan Sonar Data Using Convolutional Neural Networks

机译:使用卷积神经网络侧扫声纳数据的海底沉积物分类

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Spatially high-resolution information on the seabed sediment is import for many applications in the fields of oceanic engineering, coastal engineering, habitat mapping, and others. The seabed sediment is typically described by information based on the grain-size distribution, which are derived from sediment samples collected from the seafloor. For covering large areas side-scan sonar systems are typically used, which measure the backscatter intensity. From this information the sediment types can be derived. We propose a model for the automatic sediment type classification of the side-scan sonar data, which is based on convolutional neural networks (CNN). A big advantage of CNN is that they provide an end-to-end training: the CNN derives appropriate features automatically during the training process, which are then used for classification. The approach is based on a patch-wise classification using ensemble voting. The approach is evaluated on real world side-scan sonar data, which have been labelled using four classes (fine, sand, coarse, and mixed sediment) by experts. While the prediction of sand achieves an accuracy of 83 percent, the accuracy for fine sediment is very poor (11 percent).
机译:关于海底沉积物的空间高分辨率信息是在海洋工程,沿海工程,栖息地映射等领域的许多应用程序进口。海底沉积物通常通过基于晶粒尺寸分布的信息来描述,这些信息来自从海底收集的沉积物样本。对于覆盖大区域,通常使用侧扫声卡系统,从而测量反向散射强度。从该信息可以派生沉积物类型。我们提出了一种用于基于卷积神经网络(CNN)的侧扫声卡数据的自动沉积物类型分类模型。 CNN的一个很大的优势在于它们提供了端到端的培训:CNN在训练过程中自动导出适当的功能,然后将其用于分类。该方法基于使用集合投票的修补程序分类。该方法是在真实世界侧扫描声纳数据上进行评估,这些数据已经用专家使用四个类(细,沙,粗糙和混合沉积物)标记。虽然砂的预测达到了83%的准确性,但细沉积物的精度非常差(11%)。

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