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Mapping Seabed Geology by Ground-Truthed Textural Image/Neural Network Classification of Acoustic Backscatter Mosaics

机译:通过地面反向纹理图像/神经网络分类的海底地质图绘制海床地质

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We present a novel, automated method for seabed classification based on shallow water backscatter mosaics from Sydney Harbour. Our approach compares the results between two different methods of image feature extraction when combined with artificial neural networks. The association of image textures with seabed geology is used to train the artificial neural networks to recognise the variability of textural attributes for three seabed classes comprising mud, sand and gravel. After network training, we classify unknown portions of the backscatter mosaic with a success rate ranging from 77% to 92%. Our results suggest that the computationally fast grey-level co-occurrence iteration algorithm holds promise for benthic habitat mapping in space and time, leading to real-time data analysis at sea.
机译:我们提出了一种新的,自动化的方法,该方法基于悉尼港的浅水反向散射镶嵌技术进行海床分类。当与人工神经网络结合使用时,我们的方法比较了两种不同的图像特征提取方法的结果。图像纹理与海底地质的关联用于训练人工神经网络,以识别包括泥土,沙子和砾石在内的三个海底类别的纹理属性的可变性。经过网络训练后,我们对反向散射镶嵌的未知部分进行分类,成功率范围为77%至92%。我们的结果表明,计算上快速的灰度共现迭代算法有望在时空上绘制底栖生物栖息地地图,从而实现海上实时数据分析。

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