Visual information processing for deep-sea visual monitoring system

Chunyan Ma , Xin Li , Yujie Li , Xinliang Tian , Yichuan Wang , Hyoungseop Kim , Seiichi Serikawa
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引用次数: 60

Abstract

Due to the rising demand for minerals and metals, various deep-sea mining systems have been developed for the detection of mines and mine-like objects on the seabed. However, many of them contain some issues due to the diffusion of dangerous substances and radioactive substances in water. Therefore, efficient and accurate visual monitoring is expected by introducing artificial intelligence. Most recent deep-sea mining machines have little intelligence in visual monitoring systems. Intelligent robotics, e.g., deep learning-based edge computing for deep-sea visual monitoring systems, have not yet been established. In this paper, we propose the concept of a learning-based deep-sea visual monitoring system and use testbeds to show the efficiency of the proposed system. For example, to sense the underwater environment in real time, a large quantity of observation data, including captured images, must be transmitted from the seafloor to the ship, but large-capacity underwater communication is difficult. In this paper, we propose using deep compressed learning for real-time communication. In addition, we propose the gradient generation adversarial network (GGAN) to recover the heavily destroyed underwater images. In the application layer, wavelet-aware superresolution is used to show high-resolution images. Therefore, the development of an intelligent remote control deep-sea mining system with good convenience using deep learning applicable to deep-sea mining is expected.

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深海视觉监测系统的视觉信息处理
由于对矿物和金属的需求不断增加,各种深海采矿系统已经开发出来,用于探测海底的地雷和类似地雷的物体。然而,其中许多由于危险物质和放射性物质在水中的扩散而存在一些问题。因此,通过引入人工智能,人们期望实现高效、准确的视觉监控。大多数最新的深海采矿机在视觉监控系统上几乎没有智能。智能机器人,如基于深度学习的深海视觉监测系统边缘计算,尚未建立。在本文中,我们提出了一个基于学习的深海视觉监测系统的概念,并通过实验平台证明了该系统的有效性。例如,要实时感知水下环境,必须将包括捕获图像在内的大量观测数据从海底传输到船舶,但大容量水下通信是困难的。在本文中,我们提出将深度压缩学习用于实时通信。此外,我们提出了梯度生成对抗网络(GGAN)来恢复严重破坏的水下图像。在应用层,采用小波感知超分辨率来显示高分辨率图像。因此,利用深度学习技术开发一种适用于深海采矿的便捷性好的智能遥控深海采矿系统是值得期待的。
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