基于YOLOx的航空图像海上目标检测

Yuan-bo Wang, Haiwen Yuan, Yongshuai Li, Bulin Zhang
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引用次数: 0

摘要

在海上场景中对船舶进行准确的检测,有利于提高运输效率,减少海上交通事故的发生。然而,无人机视角下的船舶体积较小,尺度变化较大,影响了检测算法。针对这一问题,本文提出了一种基于YOLOx的海上目标检测方法。首先,对海上场景下的船舶数据进行处理筛选,形成自建数据集。然后,将重新训练的YOLOx模型用于海事场景下的船舶检测。最后,在自建数据集上,分别使用CenterNet、YOLOv3和YOLOv4对该方法进行对比实验。通过对比实验结果,发现YOLOx的检测准确率最好,达到90.86%。该方法有助于推动无人机在海上场景中的应用发展。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Maritime Object Detection based on YOLOx for Aviation Image
Accurate detection of ships in maritime scenarios is conducive to improving transport efficiency and reducing the occurrence of maritime traffic accidents. However, ships under the drone perspective are small and have various scale variations, affecting the detection algorithms. Aiming at this problem, this paper proposes a maritime object detection method based on YOLOx. First, the ship data in the maritime scenario is processed and screened to form a self-built dataset. Then, the retrained YOLOx model is used to detect ships in maritime scenarios. Finally, on the self-built dataset, CenterNet, YOLOv3, and YOLOv4 are used to conduct a comparative experiment with this method. Through the results of the comparative experiments, it is found that the detection accuracy of YOLOx is the best, reaching 90.86%. The method helps to promote the development of the application of drones in maritime scenarios.
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