基于EfficientDet模型的复杂背景SAR图像鲁棒快速舰船检测

Ali Can Karaca
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引用次数: 1

摘要

合成孔径雷达(SAR)是遥感领域最重要的主动成像系统之一。近年来,由于SAR和深度学习方法的发展,船舶检测的性能得到了提高。然而,利用不同的卫星图像和船舶尺寸的变化以及复杂背景下的船舶检测是降低船舶检测性能的两个具有挑战性的任务。由于卫星图像的尺寸相当高,因此使用快速轻量级的深度学习模型也很重要。在本文中,我们提出使用EfficientDet-D0模型为上述问题提供一个鲁棒且快速的解决方案。实验在船舶探测数据集上进行,该数据集包括来自哨兵一号和高分三号卫星的近40,000个图像补丁。在13个不同的性能指标、计算时间和视觉比较方面,将EfficientDet-D0模型与Faster R-CNN、RetinaNet和SSD-MobileNetv2进行了比较。结果表明,对于复杂背景和多尺度船舶尺寸问题,效率- d0模型的鲁棒性最强。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Robust and Fast Ship Detection In SAR Images With Complex Backgrounds Based on EfficientDet Model
Synthetic aperture radar (SAR) is one of the most important active imaging systems used in remote sensing. Thanks to SAR and deep learning methods, ship detection can be performed with high performances in recent years. However, using the images of different satellites with changing ship sizes and detecting the ships under complex backgrounds are two challenging tasks that decrease ship detection performance. Since the dimensions of the satellite images are quite high, it is also important to use a fast and lightweight deep learning model. In this paper, we propose the usage of EfficientDet-D0 model to provide a robust and fast solution to the above problems. Experiments were carried out on the Ship-Detection-Dataset that includes nearly 40,000 image patches from Sentinel-1 and Gaofen-3 satellites. EfficientDet-D0 model was compared with Faster R-CNN, RetinaNet, and SSD-MobileNetv2 in terms of 13 different performance metrics, computation times, and visual comparison. The results demonstrate that EfficienDet-D0 model provides the most robust solution to the complex background and multiscale ship size problems.
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