论文标题
模拟 - 高分辨率模拟数据集,用于船舶检测,并具有精确的注释
SimuShips -- A High Resolution Simulation Dataset for Ship Detection with Precise Annotations
论文作者
论文摘要
障碍物检测是自动海洋表面容器(AMSV)的基本能力。最新的障碍检测算法基于卷积神经网络(CNN)。尽管CNN提供了更高的检测准确性和快速检测速度,但它们需要大量数据进行培训。特别是,特定于域数据集的可用性是障碍物检测的挑战。进行现场实验的困难限制了海上数据集的收集。由于进行现场操作的后勤成本,仿真工具为数据收集提供了安全且具有成本效益的替代方案。在这项工作中,我们介绍了Simuships,这是一个用于海上环境的基于公开的基于仿真的数据集。我们的数据集由9471高分辨率(1920x1080)的图像组成,其中包括各种障碍类型,大气和照明条件以及遮挡,比例和可见的比例变化。我们以边界框的形式提供注释。此外,我们使用Yolov5进行实验,以测试模拟数据的可行性。我们的实验表明,真实图像和模拟图像的组合将所有类别的召回率提高了2.9%。
Obstacle detection is a fundamental capability of an autonomous maritime surface vessel (AMSV). State-of-the-art obstacle detection algorithms are based on convolutional neural networks (CNNs). While CNNs provide higher detection accuracy and fast detection speed, they require enormous amounts of data for their training. In particular, the availability of domain-specific datasets is a challenge for obstacle detection. The difficulty in conducting onsite experiments limits the collection of maritime datasets. Owing to the logistic cost of conducting on-site operations, simulation tools provide a safe and cost-efficient alternative for data collection. In this work, we introduce SimuShips, a publicly available simulation-based dataset for maritime environments. Our dataset consists of 9471 high-resolution (1920x1080) images which include a wide range of obstacle types, atmospheric and illumination conditions along with occlusion, scale and visible proportion variations. We provide annotations in the form of bounding boxes. In addition, we conduct experiments with YOLOv5 to test the viability of simulation data. Our experiments indicate that the combination of real and simulated images improves the recall for all classes by 2.9%.