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Underwater Acoustic Image Enhancement by Using Fast Super-Resolution with Generative Adversarial Networks

机译:利用具有生成对抗网络的快速超分辨率的水下声学图像增强

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Acoustic sensors play a fundamental role in underwater applications. They are used to perform a wide variety of tasks: from the perception of the surrounding environment to the support of inertial sensors in navigation strategies. The quality of the acquired images deeply affects the obtained results and, consequently, image enhancement approaches need to be developed and tested. Super-Resolution (SR) techniques are employed to reconstruct one high-resolution image by composing a sequence of low-resolution ones. By applying these strategies, the information content of an image can be considerably increased, but the required computational time is incompatible for real-time employment. Due to this limitation, an SR Generative Adversarial Network (SRGAN) approach has been developed in the presented work, where the SR images are used during the training phase of the GAN framework. The proposed approach, which has been developed for images provided by a Forward-Looking Sonar (FLS), can guarantee a solid trade-off between the quality of the generated high-resolution image and the run-time execution.
机译:声学传感器在水下应用中起着基本作用。它们用于执行各种各样的任务:从周围环境的看法到导航策略中的惯性传感器的支持。所获取的图像的质量深深影响获得的结果,从而需要开发和测试图像增强方法。使用超分辨率(SR)技术来通过组合一系列低分辨率序列来重建一个高分辨率图像。通过应用这些策略,可以大大增加图像的信息内容,但所需的计算时间对于实时就业不兼容。由于这种限制,在所呈现的工作中开发了SR生成的对抗网络(SRGAN)方法,其中在GAN框架的训练阶段使用SR图像。已经开发用于由前瞻性声纳(FLS)提供的图像的所提出的方法可以保证所产生的高分辨率图像的质量和运行时执行之间的实体权衡。

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