浑浊沿海地区密集水深测量的回归模型

Steven Martinez Vargas, C. Delrieux, A. Vitale, Katy Lorena Blanco Monroy
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摘要

我们对随机森林和支持向量机两种回归模型的行为和鲁棒性进行了训练和分析,并使用航空高光谱图像和回声测深仪测量了巴伊亚布兰卡河口(阿根廷布宜诺斯艾利斯)的一个地区,以生成密集的水深图。河口的这个区域的特点是泥沙输运量大,这使得它的水域浑浊,这使得测深光学估计变得困难。使用无人机上的高光谱相机获得的24个近红外和可见光谱波段的图像,以及USV上的声纳传感器在大约800平方米的区域内测量的100个测深数据点。最佳模型为Random Forest,确定系数为0.815(检验数据),RSME = 0.160 m,绝对平均误差小于1.3%。我们进行消融试验来评估模型的稳健性,并使用SHAP值确定模型中发生率最高的频带。结果表明,高光谱图像与声纳数据在浑浊的浅水中融合是可行的,可以对巴伊亚布兰卡河口浅水和浑浊区域的水下剖面进行密集和精确的重建。
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Regression Models for Dense Bathymetry in Turbid Coastal Areas
We trained and analyzed the behavior and robustness of two regression models, Random Forest and Support Vector Machine, with aerial hyperspectral images and echosounder measurements in an area of the Bahia Blanca estuary (Buenos Aires, Argentina) to generate a dense bathymetric map. This region of the estuary is characterized by high sediment transport, which makes its waters turbid, which makes bathymetric-optical estimates difficult. Images of 24 NIR and visible spectral bands acquired using a hyperspectral camera on board a UAV were used, together with 100 bathymetric data points surveyed with a sonar sensor on board a USV in an area of approximately 800 m2. The best model was Random Forest with a coefficient determination of 0.815 (for the test data), an RSME = 0.160 m, and an absolute mean error less than 1.3%. We performed ablation tests to evaluate the robustness of the models and using SHAP values we determined the bands with the highest incidence in the model. The results allow for dense and accurate reconstructions of the underwater profile in shallow and muddy regions of the Bahia Blanca estuary, showing the feasibility of merging hyperspectral images with sonar data in turbid shallow waters.
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