海上无人机对运动船舶的长期检测跟踪算法
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TP391. 4 TH89

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国家重点研发计划( 2022YFB4301401)、国家自然科学基金( 61976033)、辽宁省中试基地中试验证类科技项目( 2022JH24 / 10200029)资助


Long-term detection and tracking algorithm for moving vessels by maritime UAVs
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    摘要:

    针对无人机在海上对船舶进行长时跟踪时,由于船身被遮挡及船舶离开视野导致目标跟踪失败的问题,提出了基于 YOLOv5 和 ECO_HC 相结合的海上目标长时检测跟踪算法。 首先,利用感知哈希与峰值比例综合评估跟踪过程的可靠性,目标 丢失时利用 YOLOv5 检测器重新定位目标位置,并初始化跟踪器模型,消除累计错误信息。 其次针对目标在跟踪过程中存在的 旋转变化,利用傅里叶-梅林变换进行旋转参数估计,减少了目标旋转造成的跟踪器性能下降问题。 本文算法在 OTB-100 数据 集上的平均精确度和成功率为 83. 9% 和 76. 7% ;在无人机平台上进行实际海上场景船舶跟踪实验,在完全遮挡及离开视野两种 情况下精确度和成功率分别为为 80. 9% ,60. 4% 和 90. 2% ,48. 3% ,实验表明本文算法可以有效抑制常见海面干扰因素的影响。

    Abstract:

    An algorithm for long-term maritime target detection and tracking based on the combination of YOLOv5 and ECO_HC is proposed to address the problem of tracking failure caused by occlusion of ship hulls and ships leaving the field of view during unmanned aerial vehicle (UAV) tracking of ship at sea. First, perceptual hashing and the ratio between the second and first major modes are used to comprehensively assess the reliability of the tracking process. In the event of target loss, the YOLOv5 detector is utilized to reposition the target and initialize the tracking model. Thereby, the accumulation of erroneous information is eliminated. Secondly, to address the rotational changes of the target during tracking, the Fourier-Mellin transform is employed for rotation parameter estimation, mitigating performance decline due to target rotation. The proposed algorithm achieves an average precision and success rate of 83. 9% and 76. 7% , respectively, on the OTB-100 dataset. Field experiments of ship tracking in actual maritime scenarios on UAV platforms show precision and success rates of 80. 9% and 60. 4% under complete occlusion, and 90. 2% and 48. 3% when the target is out of the field of view. The experiments demonstrate that the proposed algorithm can effectively suppress the influence of common maritime interference factors.

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范云生,张 凯,牛龙辉,刘 婷,费 凡.海上无人机对运动船舶的长期检测跟踪算法[J].仪器仪表学报,2024,45(3):326-335

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  • 在线发布日期: 2024-05-31
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