Towards Development of Visual-Range Sea State Image Dataset for Deep Learning Models

Muhammad Umair, M. Hashmani
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引用次数: 1

Abstract

Wind waves are generated by winds blowing over long stretches of the sea surface. They are considered as one of the important elements of marine weather. A sea state describes prevailing wind wave conditions. Due to its constant presence, it is important to classify the sea state for safety and optimal operations of coastal and offshore structures, maritime traffic, and recreational activities etc. The Beaufort wind force scale provides an empirical solution for sea state classification. Additionally, wave parameters acquired from sea buoys can be used to identify the sea state. However, the deployment and maintenance costs of buoys are high. Recent advancements in deep learning-based image classification can lead toward the development of low-cost sea state classification solutions. However, to train and test such models, required visual-range sea state image dataset is not yet publicly available. Hence, the authors have proposed the development of said dataset, which is currently in its later stages of construction. In this paper, we present general observations, design considerations, and guidelines formulated during the development of the visual-range sea state image dataset. The paper discusses the important factors related to sensor and field observation site selection, data acquisition considerations, data processing, and the manual sea state identification mechanism. The paper also provides guidelines for application specific augmentation policy development and recommends a baseline number of representative instances per class for the dataset. The research community can refer to the presented work for further research in the development of sea state image datasets.
面向深度学习模型的视觉范围海况图像数据集的开发
风浪是由风吹过海面形成的。它们被认为是海洋天气的重要因素之一。海况描述盛行的风浪状况。由于它的持续存在,对沿海和近海结构、海上交通和娱乐活动等的安全和最佳操作进行海况分类是很重要的。波弗特风力标度为海况分类提供了经验解决方案。此外,从海上浮标获得的波浪参数可以用来识别海况。然而,浮标的部署和维护成本很高。基于深度学习的图像分类的最新进展可以导致低成本海况分类解决方案的发展。然而,为了训练和测试这些模型,所需的视觉范围海况图像数据集尚未公开。因此,作者提出了上述数据集的开发,该数据集目前处于构建的后期阶段。在本文中,我们提出了在视觉范围海况图像数据集开发过程中制定的一般观察结果,设计考虑因素和指导方针。本文讨论了与传感器和野外观测点选择、数据采集考虑、数据处理和人工海况识别机制有关的重要因素。本文还为特定于应用程序的增强策略开发提供了指导方针,并建议为数据集的每个类设置一个代表性实例的基线数量。研究界可以参考所提出的工作,以进一步研究海况图像数据集的开发。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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