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首页> 外文期刊>International Journal of Control, Automation, and Systems >Realistic Sonar Image Simulation Using Deep Learning for Underwater Object Detection
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Realistic Sonar Image Simulation Using Deep Learning for Underwater Object Detection

机译:现实声纳图像仿真对水下对象检测的深度学习

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This paper proposes a method that synthesizes realistic sonar images using a Generative Adversarial Network (GAN). A ray-tracing-based sonar simulator first calculates semantic information of a viewed scene, and the GAN-based style transfer algorithm then generates realistic sonar images from the simulated images. We evaluated the method by measuring the similarity between the generated realistic images and real sonar images for several objects. We applied the proposed method to deep learning-based object detection, which is necessary to automate underwater tasks such as shipwreck investigation, mine removal, and landmark-based navigation. The detection results showed that the proposed method could generate images realistic enough to be used as training images of target objects. The proposed method can synthesize realistic training images of various angles and circumstances without sea trials, making the object detection straightforward and robust. The proposed method of generating realistic sonar images can be applied to other sonar-image-based algorithms as well as to object detection.
机译:本文提出了一种方法,该方法使用生成的对抗网络(GaN)合成现实声纳图像。基于光线跟踪的声纳模拟器首先计算观看的场景的语义信息,并且基于GaN的样式传输算法然后从模拟图像生成现实声库图像。我们通过测量产生的现实图像和真实声纳图像的几个对象来评估该方法。我们将建议的方法应用于基于深度学习的对象检测,这是自动化沉船调查,矿井删除和基于地标的导航等水下任务所必需的。检测结果表明,所提出的方法可以产生足以用作目标对象的训练图像的图像。该方法可以在没有海洋试验的情况下综合各种角度和情况的现实训练图像,使物体检测直接且稳健。可以应用于产生现实声卡图像的所提出的方法,可以应用于基于Sonar图像的算法以及对象检测。

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