German Aerospace Center (DLR), Institute for the Protection of Maritime Infrastructures, Fischkai 1, 27572 Bremerhaven, Germany.
Sensors (Basel). 2022 Apr 1;22(7):2713. doi: 10.3390/s22072713.
Camera systems support the rapid assessment of ship traffic at ports, allowing for a better perspective of the maritime situation. However, optimal ship monitoring requires a level of automation that allows personnel to keep track of relevant variables in the maritime situation in an understandable and visualisable format. It therefore becomes important to have real-time recognition of ships present at the infrastructure, with their class and geographic position presented to the maritime situational awareness operator. This work presents a novel dataset, ShipSG, for the segmentation and georeferencing of ships in maritime monitoring scenes with a static oblique view. Moreover, an exploration of four instance segmentation methods, with a focus on robust (Mask-RCNN, DetectoRS) and real-time performances (YOLACT, Centermask-Lite) and their generalisation to other existing maritime datasets, is shown. Lastly, a method for georeferencing ship masks is proposed. This includes an automatic calculation of the pixel of the segmented ship to be georeferenced and the use of a homography to transform this pixel to geographic coordinates. DetectoRS provided the highest ship segmentation mAP of 0.747. The fastest segmentation method was Centermask-Lite, with 40.96 FPS. The accuracy of our georeferencing method was (22 ± 10) m for ships detected within a 400 m range, and (53 ± 24) m for ships over 400 m away from the camera.
相机系统支持对港口船舶交通的快速评估,使人们能够更好地了解海上情况。然而,最佳的船舶监测需要一定程度的自动化,以便人员能够以可理解和可视化的格式跟踪海上情况中的相关变量。因此,重要的是要实时识别基础设施上存在的船舶,将其类别和地理位置呈现给海上态势感知操作员。本工作提出了一个新的数据集 ShipSG,用于对具有静态倾斜视角的海上监测场景中的船舶进行分割和地理定位。此外,还探索了四种实例分割方法,重点关注鲁棒性(Mask-RCNN、DetectoRS)和实时性能(YOLACT、Centermask-Lite),以及它们在其他现有海上数据集上的泛化能力。最后,提出了一种船舶掩模地理定位的方法。这包括自动计算要地理定位的分割船舶的像素,并使用单应性将该像素转换为地理坐标。DetectoRS 提供了最高的船舶分割 mAP,为 0.747。分割速度最快的方法是 Centermask-Lite,达到 40.96 FPS。对于在 400 米范围内检测到的船舶,我们的地理定位方法的精度为(22 ± 10)米,对于距离相机超过 400 米的船舶,精度为(53 ± 24)米。