Underwater Vehicles have become more sophisticated, driven by the off-shore sector and the scientific community's rapid advancements in underwater operations. Notably, many underwater tasks, including the assessment of subsea infrastructure, are performed with the assistance of Autonomous Underwater Vehicles (AUVs). There have been recent breakthroughs in Artificial Intelligence (AI) and, notably, Deep Learning (DL) models and applications, which have widespread usage in a variety of fields, including aerial unmanned vehicles, autonomous car navigation, and other applications. However, they are not as prevalent in underwater applications due to the difficulty of obtaining underwater datasets for a specific application. In this sense, the current study utilises recent advancements in the area of DL to construct a bespoke dataset generated from photographs of items captured in a laboratory environment. Generative Adversarial Networks (GANs) were utilised to translate the laboratory object dataset into the underwater domain by combining the collected images with photographs containing the underwater environment. The findings demonstrated the feasibility of creating such a dataset, since the resulting images closely resembled the real underwater environment when compared with real-world underwater ship hull images. Therefore, the artificial datasets of the underwater environment can overcome the difficulties arising from the limited access to real-world underwater images and are used to enhance underwater operations through underwater object image classification and detection.
翻译:水下车辆在离岸部门和科学界水下作业迅速进步的推动下,已变得更加精密,在水下作业的推动下,水下车辆已变得日益精密; 值得注意的是,许多水下任务,包括对海底基础设施的评估,都是在自主水下车辆(AUVs)的协助下执行的; 人工智能(AI),特别是深层学习(DL)模型和应用方面最近有所突破,在各个领域广泛使用,包括航空无人驾驶飞行器、自主汽车导航和其他应用; 然而,由于难以为具体应用获得水下数据集,在水下应用方面没有这么普遍; 从这个意义上讲,目前的研究利用DL地区最近的进展来建立从实验室环境中捕获的物品照片中生成的直言数据集; 利用Genement Aversarial网络(GANs)将收集到的图像与包含水下环境的照片相结合,将实验室物体数据集转化为水下领域; 研究结果表明,建立这种数据集是可行的,因为由此产生的图像与实际水下环境相近乎实际水下环境,与实际水下船舶船体的图像相比,因此,从水下作业到水下作业的图像,人工数据可以升级。