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Machine Learning Applied to the Underwater Radar-Encoded Laser System

机译:机器学习应用于水下雷达编码的激光系统

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In this work we demonstrate the use of machine learning to enhance imagery collected by the underwater radar-encoded laser imaging system. Laser-based sensors offer the potential for high-resolution, three-dimensional imaging in the underwater environment. However, these capabilities become degraded in turbid water environments due to scattering. This work presents experimental results applying a denoising autoencoder to imagery collected in our lab test tank. We experiment with both shallow and deep network architectures at a variety of water conditions. The use of machine learning allows us to suppress both backscatter and forward scatter. In particular, by applying the denoising autoencoder we are able to acquire imagery at 6.9 attenuation lengths, representing a 25% improvement over our baseline processing scheme.
机译:在这项工作中,我们展示了机器学习的使用来增强由水下雷达编码的激光成像系统收集的图像。基于激光的传感器提供了水下环境中高分辨率,三维成像的潜力。然而,由于散射,这些能力在浊度水环境中变得降低。这项工作介绍了在我们的实验室测试箱中收集的图像上的实验结果。我们在各种水条件下尝试浅层和深层网络架构。机器学习的使用允许我们抑制反向散射和前向散射。特别是,通过应用Denoising AutoEncoder,我们能够在6.9衰减长度下获取图像,而是通过基线处理方案的改进25%。

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