Classification of 3D Sonar Point Clouds derived Underwater using Machine and Deep Learning (CANUPO and RandLA-Net) Approaches

IF 0.3 Q4 REMOTE SENSING
S. Ntuli, Mulemwa Akombelwa, Angus Forbes, Mayshree Singh
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Abstract

The techniques of point cloud classification in aquatic environments have various applications such as landslide hazard mapping, recovery of lost objects, underwater infrastructure inspection, exploration of mineral resources on the seabed, underwater cultural heritage documentation, environmental preservation and conservation purposes. This study combines acoustic (Sonar) and laser-based (Lidar) remote sensing technologies in an aquatic environment with two machine and deep learning approaches to illustrate the techniques to identify submerged objects. Firstly, the relative accuracy of the underwater imaging system, the BlueView BV5000 Mechanical Scanning Sonar, is evaluated at close range. Secondly, the supervised CANUPO and RandLA-Net classification approaches are used to classify submerged sonar point clouds. Common objects of interest, namely tyres and chairs, were selected for classification. Relative accuracy measurement results showed a centimetre-level root mean square error (RMSE) value, with good accuracies recorded when the scanner is positioned close to objects. The best results were achieved when the target objects were placed at a minimum distance of 2 m from the acoustic scanner. Subsequently, the results of point cloud classification were satisfactory for both approaches. An overall accuracy of 79.81% and an   F1 score of 79.80% were achieved using the CANUPO classification approach. On the other hand, an 80.72% overall accuracy and an 80.63% F1 score were obtained using a RandLA-Net approach. These analyses provide a reasonable framework for the parameters that can be used when applying these techniques in natural aquatic environments.
使用机器学习和深度学习(CANUPO 和 RandLA-Net)方法对水下三维声纳点云进行分类
水生环境中的点云分类技术有多种应用,如滑坡危险测绘、失物打捞、水下基础设施检测、海底矿产资源勘探、水下文化遗产记录、环境保护等。本研究将水下环境中的声学(声纳)和激光(激光雷达)遥感技术与两种机器学习和深度学习方法相结合,以说明识别水下物体的技术。首先,对水下成像系统 BlueView BV5000 机械扫描声纳的近距离相对精度进行了评估。其次,使用有监督的 CANUPO 和 RandLA-Net 分类方法对水下声纳点云进行分类。选择了常见的感兴趣对象,即轮胎和椅子进行分类。相对准确度测量结果显示,均方根误差(RMSE)值为厘米级,当扫描仪靠近目标时,准确度较高。当目标物体距离声学扫描仪至少 2 米时,测量结果最佳。随后,两种方法的点云分类结果都令人满意。CANUPO 分类方法的总体准确率为 79.81%,F1 分数为 79.80%。另一方面,使用 RandLA-Net 方法获得了 80.72% 的总体准确率和 80.63% 的 F1 分数。这些分析为在自然水生环境中应用这些技术时可使用的参数提供了一个合理的框架。
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