基于多光谱单目视觉的船载海洋波浪全天候感知方法

  • 摘要: 目的针对船载视觉浪向估计在夜间低照度、雨雾遮挡、强反光以及船体横摇、纵摇、艏摇等动态工况下易出现纹理缺失、视角漂移和估计不稳定等问题,本文提出一种基于多光谱单目视觉的船载海洋波浪全天候感知方法。方法构建可见光—长波红外多光谱成像与IMU姿态协同采集系统,通过时间同步与滑动窗口构建时序样本;采用CLAHE增强与U-Net分割提取海面有效区域;基于ResNet-18迁移学习与姿态正余弦映射实现多模态特征融合,并引入轻量化多头自注意力机制建模跨帧相关性完成浪向回归;结合多相机几何一致性校验提升系统稳定性与输出可靠性。结果广州—珠海近海实测表明:在可见光条件下,浪向估计平均绝对误差为0.41°、标准差为0.28°、成功率为99.90%;长波红外条件下平均绝对误差为1.14°、标准差为0.89°、成功率为98.94%,在夜间与弱光环境中,系统仍能够实现连续、稳定的浪向趋势输出。结论所提的多光谱单目视觉—IMU多模态时序感知方法在复杂海况与动态平台条件下具备较高精度与鲁棒性,长波红外成像显著增强了全天候观测能力,可为船载海况智能感知与相关装备工程化应用提供技术支撑。

     

    Abstract: Objective To address the problems of texture loss, viewpoint drift, and unstable estimation in shipborne vision-based wave measurement under nighttime low illumination, rain-fog occlusion, strong specular reflection, and vessel roll-pitch-yaw motions, this study investigates an all-weather ocean wave perception method based on multispectral monocular vision, aiming at robust inversion of key wave parameters such as dominant wave direction. Methods A shipborne multispectral acquisition system integrating visible-light and long-wave infrared imaging with an inertial measurement unit (IMU) was constructed. Image and attitude data were time-synchronized and organized into temporal samples using a sliding window. Contrast Limited Adaptive Histogram Equalization (CLAHE) and U-Net segmentation were employed to enhance images and extract effective sea-surface regions while removing ship structures, sky-sea horizon, wake foam, and occlusions. A ResNet-18 encoder with transfer learning was used for frame-wise feature extraction, and multimodal fusion was achieved via trigonometric mapping of attitude angles and multilayer perceptron embedding. A lightweight multi-head self-attention mechanism was introduced to model inter-frame correlations and regress the two-dimensional unit vector of wave direction, followed by angle recovery using the atan2 function. A multi-camera geometric consistency verification and fusion strategy was further designed to improve engineering reliability. Results Field experiments conducted on an engineering vessel in the Zhuhai coastal waters show that, under visible-light conditions, the mean absolute error of wave direction estimation is 0.41° with a standard deviation of 0.28° and a success rate of 99.90%. Under long-wave infrared conditions, the mean absolute error is 1.14°, the standard deviation is 0.89°, and the success rate is 98.94%. Stable and smooth directional trends can still be obtained in nighttime and low-light environments, and temporal modeling effectively suppresses output fluctuations caused by transient occlusion and short-term loss of sea-surface regions of interest.Conclusions The proposed multispectral monocular vision-IMU multimodal temporal perception framework achieves high accuracy and robustness under complex sea states and dynamic shipborne conditions. Long-wave infrared imaging significantly enhances all-weather observation capability, providing technical support for intelligent shipborne sea-state perception and the engineering deployment of ocean observation systems.

     

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