基于光照变化不敏感特征变换的港口环境特征提取

Illumination-Variation Insensitive Feature Transform Based Harbor Environment Feature Extraction

  • 摘要:目的】针对港口水域场景中显著光照变化导致的特征检测失败与匹配性能下降问题,提出一种基于光照变化不敏感特征变换(Illumination-Invariant Feature Transform, IIFT)的图像特征提取方案,旨在提升无人水面艇在复杂光照环境下的感知能力。【方法】首先,采用高斯金字塔与信息熵图像分块策略,筛选出纹理信息丰富的候选区域;其次,利用相位一致性(Phase Congruency, PC)理论对光照变化的不敏感特性,提取具有强鲁棒性的关键点;最后,设计相位一致性-快速视网膜关键点(PC-FREAK)描述符,通过将特征点邻域的灰度值替换为相位一致性值,增强描述符在光照变化下的鲁棒性与区分度。【结果】实验结果表明:在黄昏逆光、强太阳眩光及夜间低照度等极端港口场景下,IIFT算法展现出极强的鲁棒性,平均可重复率较传统梯度算法最高提升17.21%,较SuperPoint最高提升15.08%,平均F1-Score提升7.00%~18.61%;且平均RMSE控制在2.2像素以内。【结论】所提IIFT方法在多种复杂光照水域场景下,展现出优异的光照鲁棒性与环境适应性,为港口场景下光照剧烈变化条件的特征提取任务提供了可靠解决方案。

     

    Abstract: Objectives In this paper, to simultaneously address feature detection failure and matching performance decline problems caused by significant illumination variation in harbor scenarios, a feature matching scheme, termed illumination-invariant feature transform (IIFT), is innovatively proposed. Methods Firstly, a Gaussian pyramid combined with an image block strategy based on information entropy is employed to select candidate regions rich in texture information. Secondly, leveraging the insensitivity of Phase Congruency (PC) theory to illumination changes, keypoints with high robustness are detected. Finally, a PC-FREAK (Phase Congruency - Fast Retina Keypoint) descriptor is designed. By replacing the grayscale values in the neighborhood of keypoints with phase congruency values, the robustness and discriminability of the descriptor under varying illumination are significantly enhanced. Results The experimental results demonstrate that the proposed IIFT algorithm exhibits strong robustness in extreme port scenarios. Compared to traditional gradient-based algorithms and SuperPoint, the average repeatability rate achieves maximum improvements of 17.21% and 15.08%, respectively. The average F1-Score shows an improvement ranging from 7.00% to 18.61%, while the average RMSE is maintained within 2.2 pixels. Conclusions This provides a reliable solution for feature extraction tasks under severe illumination changes in such environments.

     

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