A Novel Underwater Image Synthesis Method Based on a Pixel-Level Self-Supervised Training Strategy

Zhi-zong Wu, Zhengxing Wu, Yue Lu, Jian Wang, Junzhi Yu
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引用次数: 2

Abstract

With the rapid development of deep neural networks, underwater vision plays an increasingly important role in the underwater robotic operation. However, the scarce underwater datasets greatly limit the performance of deep learning on underwater visual tasks, further hindering the applications of underwater operation. To solve this problem, we propose an underwater image synthesis method, which can directly convert the natural light image into the synthetic underwater image end-to-end. Particularly, a pixel-level self-supervised training strategy is designed to maximize the structural similarity between the synthesized and real images, through training the real underwater images. Finally, extensive experiments are carried out, and the obtained results demonstrate the effectiveness and superiority of our methods by quantitative and qualitative comparisons. The proposed underwater image synthesis method offers a valuable sight for underwater vision and manipulating control.
基于像素级自监督训练策略的水下图像合成新方法
随着深度神经网络的快速发展,水下视觉在水下机器人的操作中发挥着越来越重要的作用。然而,水下数据集的稀缺极大地限制了深度学习在水下视觉任务上的性能,进一步阻碍了水下操作的应用。为了解决这一问题,我们提出了一种水下图像合成方法,可以直接将自然光图像端到端转换为合成的水下图像。其中,设计了像素级自监督训练策略,通过对真实水下图像的训练,最大限度地提高合成图像与真实图像的结构相似性。最后,进行了大量的实验,所得结果通过定量和定性的比较证明了本文方法的有效性和优越性。所提出的水下图像合成方法为水下视觉和操纵控制提供了有价值的视角。
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