Faculty of Automation, Computer Sciences, Electronics and Electrical Engineering, "Dunǎrea de Jos" University of Galaţi, No. 111 Street Domneascǎ, 800210 Galati, Romania.
Faculty of Economics and Business Administration, "Dunarea de Jos" University of Galati, 800008 Galati, Romania.
Sensors (Basel). 2022 Dec 6;22(23):9536. doi: 10.3390/s22239536.
In the context of new geopolitical tensions due to the current armed conflicts, safety in terms of navigation has been threatened due to the large number of sea mines placed, in particular, within the sea conflict areas. Additionally, since a large number of mines have recently been reported to have drifted into the territories of the Black Sea countries such as Romania, Bulgaria Georgia and Turkey, which have intense commercial and tourism activities in their coastal areas, the safety of those economic activities is threatened by possible accidents that may occur due to the above-mentioned situation. The use of deep learning in a military operation is widespread, especially for combating drones and other killer robots. Therefore, the present research addresses the detection of floating and underwater sea mines using images recorded from cameras (taken from drones, submarines, ships and boats). Due to the low number of sea mine images, the current research used both an augmentation technique and synthetic image generation (by overlapping images with different types of mines over water backgrounds), and two datasets were built (for floating mines and for underwater mines). Three deep learning models, respectively, YOLOv5, SSD and EfficientDet (YOLOv5 and SSD for floating mines and YOLOv5 and EfficientDet for underwater mines), were trained and compared. In the context of using three algorithm models, YOLO, SSD and EfficientDet, the new generated system revealed high accuracy in object recognition, namely the detection of floating and anchored mines. Moreover, tests carried out on portable computing equipment, such as Raspberry Pi, illustrated the possibility of including such an application for real-time scenarios, with the time of 2 s per frame being improved if devices use high-performance cameras.
在当前武装冲突导致新的地缘政治紧张局势的背景下,由于放置了大量水雷,特别是在海上冲突地区,航行安全受到了威胁。此外,由于最近有大量水雷据报漂移到罗马尼亚、保加利亚、格鲁吉亚和土耳其等黑海国家的领土,这些国家在其沿海地区有密集的商业和旅游活动,这些经济活动的安全受到上述情况可能导致的意外事故的威胁。深度学习在军事行动中得到了广泛应用,特别是在打击无人机和其他致命机器人方面。因此,本研究旨在利用从摄像机(从无人机、潜艇、船只和船只拍摄)记录的图像检测漂浮和水下水雷。由于水雷图像数量较少,本研究既使用了扩充技术,也使用了合成图像生成(通过在水面背景上重叠不同类型的地雷图像),并构建了两个数据集(用于漂浮水雷和用于水下水雷)。分别训练和比较了三个深度学习模型,即 YOLOv5、SSD 和 EfficientDet(YOLOv5 和 SSD 用于漂浮水雷,YOLOv5 和 EfficientDet 用于水下水雷)。在使用三个算法模型 YOLO、SSD 和 EfficientDet 的情况下,新生成的系统在物体识别方面显示出了很高的准确性,即对漂浮和锚定水雷的检测。此外,在 Raspberry Pi 等便携式计算设备上进行的测试表明,有可能将此类应用纳入实时场景,如果设备使用高性能摄像机,则可以将每帧 2 秒的时间缩短。