论文标题

使用稀疏点云生成和自动对象检测

Time and Cost-Efficient Bathymetric Mapping System using Sparse Point Cloud Generation and Automatic Object Detection

论文作者

Pulido, Andres, Qin, Ruoyao, Diaz, Antonio, Ortega, Andrew, Ifju, Peter, Shin, Jaejeong

论文摘要

从嘈杂的声纳测量值中生成3D点云(PC)数据是一个问题,它具有潜在的应用程序映射,人造物体检查,水生植物和动物群的映射以及水下导航和潜艇等车辆的定位。侧扫声纳传感器的价格廉价成本范围,尤其是在鱼类探测器中,通常将换能器安装在船底上,并且比未连接的水下汽车(UUV)罐子的透射剂可以接近较浅的深度。但是,从侧扫声纳图像中提取3D信息是一项艰巨的任务,因为它的信噪比低,图像中缺少角度和深度信息。由于大多数从侧扫声纳图像从阴影(SFS)技术中产生3D点云的算法,因此当海底光滑,深度逐渐变化或没有可识别的对象可以识别出声音阴影时,提取3D信息尤其困难。本文引入了一种有效的算法,该算法从侧扫声纳图像中生成稀疏的3D点云。通过利用第一个声纳返回的几何形状与GPS提供的已知位置和下扫描的声纳深度测量在每个数据点相结合,以计算有效的方式完成了此计算。此外,本文实施了另一种使用转移学习使用卷积神经网络(CNN)的算法,以对现实生活中收集并通过模拟产生的侧扫声纳图像进行对象检测。该算法在真实图像和合成图像上都进行了测试,以显示合理准确的异常检测和分类。

Generating 3D point cloud (PC) data from noisy sonar measurements is a problem that has potential applications for bathymetry mapping, artificial object inspection, mapping of aquatic plants and fauna as well as underwater navigation and localization of vehicles such as submarines. Side-scan sonar sensors are available in inexpensive cost ranges, especially in fish-finders, where the transducers are usually mounted to the bottom of a boat and can approach shallower depths than the ones attached to an Uncrewed Underwater Vehicle (UUV) can. However, extracting 3D information from side-scan sonar imagery is a difficult task because of its low signal-to-noise ratio and missing angle and depth information in the imagery. Since most algorithms that generate a 3D point cloud from side-scan sonar imagery use Shape from Shading (SFS) techniques, extracting 3D information is especially difficult when the seafloor is smooth, is slowly changing in depth, or does not have identifiable objects that make acoustic shadows. This paper introduces an efficient algorithm that generates a sparse 3D point cloud from side-scan sonar images. This computation is done in a computationally efficient manner by leveraging the geometry of the first sonar return combined with known positions provided by GPS and down-scan sonar depth measurement at each data point. Additionally, this paper implements another algorithm that uses a Convolutional Neural Network (CNN) using transfer learning to perform object detection on side-scan sonar images collected in real life and generated with a simulation. The algorithm was tested on both real and synthetic images to show reasonably accurate anomaly detection and classification.

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