论文标题
神经网络正常估计和来自侧can声纳的测深量重建
Neural Network Normal Estimation and Bathymetry Reconstruction from Sidescan Sonar
论文作者
论文摘要
侧扫声纳强度编码有关海床表面正常变化的信息。但是,其他因素(例如海底几何形状及其材料组成)也会影响回流强度。可以建模这些强度从向前方向上的变化,从地表正态从测深的图和物理特性到测量强度,或者可以使用一个反向模型,该模型从强度开始,并模拟了表面正常。在这里,我们使用一个逆模型,该模型利用深度学习能力从数据中学习;卷积神经网络用于估计侧扫的正常表面。因此,海床的内部特性仅是隐式学习的。一旦估算了此信息,就可以通过优化框架重建测深图,该框架还包括高度计读数,以提供稀疏的深度轮廓作为约束。最近提出了隐式神经表示学习,以在这种优化框架中代表测深图。在本文中,我们使用神经网络来表示地图并在高度计点的约束和侧can的估计表面正常情况下进行优化。通过从几个侧扫线的不同角度融合多个观测值,通过优化改善了估计的结果。我们通过使用来自大型侧扫调查的侧扫数据重建高质量的测深,通过重建高质量的测深量来证明该方法的效率和可扩展性。我们比较了提出的数据驱动的逆模型方法,该方法是用向前的兰伯特模型对侧扫建模。我们通过将每个重建的质量与由多电流传感器构建的数据进行比较来评估它的质量。
Sidescan sonar intensity encodes information about the changes of surface normal of the seabed. However, other factors such as seabed geometry as well as its material composition also affect the return intensity. One can model these intensity changes in a forward direction from the surface normals from bathymetric map and physical properties to the measured intensity or alternatively one can use an inverse model which starts from the intensities and models the surface normals. Here we use an inverse model which leverages deep learning's ability to learn from data; a convolutional neural network is used to estimate the surface normal from the sidescan. Thus the internal properties of the seabed are only implicitly learned. Once this information is estimated, a bathymetric map can be reconstructed through an optimization framework that also includes altimeter readings to provide a sparse depth profile as a constraint. Implicit neural representation learning was recently proposed to represent the bathymetric map in such an optimization framework. In this article, we use a neural network to represent the map and optimize it under constraints of altimeter points and estimated surface normal from sidescan. By fusing multiple observations from different angles from several sidescan lines, the estimated results are improved through optimization. We demonstrate the efficiency and scalability of the approach by reconstructing a high-quality bathymetry using sidescan data from a large sidescan survey. We compare the proposed data-driven inverse model approach of modeling a sidescan with a forward Lambertian model. We assess the quality of each reconstruction by comparing it with data constructed from a multibeam sensor.