Cycle-GAN-based synthetic sonar image generation for improved underwater classification

Sunmo Koo, Sangpil Youm, Jane Shin
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Abstract

One of the main challenges in underwater automatic target recognition is in the data scarcity of underwater sonar imagery. This challenge arises especially in data-driven approaches because of the limited training dataset and unknown environmental conditions before the mission. Transfer learning and synthetic data generation have been suggested as effective methods to overcome this challenge. However, the efficiency and effectiveness of synthetic data generation methods have been limited due to the difficulty from implementing complex acoustic imaging processes and data-driven model’s poor performance under domain shifts. In this paper, we present a novel approach to address this challenge by utilizing cycle-Generative Adversarial Networks (GAN) to generate synthetic sonar images to enhance the effectiveness of the training data set. Our method simplifies the process of synthetic data generation by leveraging cycle-GAN, which is a deep Convolutional Neural Network (CNN) for image-to-image translation using unpaired dataset. The cycle-GAN based generation model transfers camera images of ship and plane into realistic synthetic sonar images. Then, these generated synthetic images are used to augment the training data set for the classification model. In this work, the effectiveness of this approach is demonstrated through a series of experiments, showing improvements in classification accuracy. One advantage of the proposed approach is in the simplification of the synthetic data generation process while improving classification accuracy. Another advantage is that the ship and plane sonar image generation model is trained solely on seabed sonar images, which are relatively easy to obtain. This approach has the potential to greatly benefit the field of underwater sonar image classification by providing a more efficient solution for addressing data scarcity.
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基于循环-广义合成声纳的合成声纳图像生成,用于改进水下分类
水下自动目标识别的主要挑战之一是水下声纳图像数据的稀缺性。由于训练数据集有限且任务前环境条件未知,数据驱动方法尤其面临这一挑战。有人提出迁移学习和合成数据生成是克服这一挑战的有效方法。然而,由于复杂的声学成像过程难以实现,以及数据驱动模型在领域偏移情况下性能不佳,合成数据生成方法的效率和有效性受到了限制。本文提出了一种新方法来应对这一挑战,即利用循环生成对抗网络(GAN)生成合成声纳图像,以提高训练数据集的有效性。我们的方法利用循环-生成逆向网络(cycle-GAN)简化了合成数据生成过程,循环-生成逆向网络是一种深度卷积神经网络(CNN),可使用非配对数据集进行图像到图像的转换。基于 cycle-GAN 的生成模型可将船舶和飞机的摄像头图像转换为逼真的合成声纳图像。然后,这些生成的合成图像被用于增强分类模型的训练数据集。在这项工作中,通过一系列实验证明了这种方法的有效性,并显示出分类准确率的提高。所提方法的优点之一是简化了合成数据生成过程,同时提高了分类准确率。另一个优势是,船舶和飞机声纳图像生成模型仅在海底声纳图像上进行训练,而海底声纳图像相对容易获得。这种方法为解决数据稀缺问题提供了一种更有效的解决方案,有望极大地促进水下声纳图像分类领域的发展。
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