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Underwater target classification in synthetic aperture sonar imagery using deep convolutional neural networks

机译:深度卷积神经网络在合成孔径声纳图像中的水下目标分类

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Deep convolutional neural networks are used to perform underwater target classification in synthetic aperture sonar (SAS) imagery. The deep networks are learned using a massive database of real, measured sonar data collected at sea during different expeditions in various geographical locations. A novel training procedure is developed specially for the data from this new sensor modality in order to augment the amount of training data available for learning and to avoid overfitting. The deep networks learned are employed for several binary classification tasks in which different classes of objects in real sonar data are to be discriminated. The proposed deep approach consistently achieves superior performance to a traditional feature-based classifier that we had relied on previously.
机译:深度卷积神经网络用于在合成孔径声纳(SAS)图像中执行水下目标分类。深度网络是使用庞大的真实,可测量声纳数据数据库来学习的,这些声纳数据是在不同地理位置的不同探险期间从海上收集的。专门针对来自这种新传感器模态的数据开发了一种新颖的训练程序,以增加可用于学习的训练数据量并避免过度拟合。所学习的深度网络用于几种二进制分类任务,其中要区分真实声纳数据中的不同类别的对象。与我们之前依赖的传统基于特征的分类器相比,所提出的深度方法始终能够实现卓越的性能。

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