Sidescan sonar is a small and cost-effective sensing solution that can be easily mounted on most vessels. Historically, it has been used to produce high-definition images that experts may use to identify targets on the seafloor or in the water column. While solutions have been proposed to produce bathymetry solely from sidescan, or in conjunction with multibeam, they have had limited impact. This is partly a result of mostly being limited to single sidescan lines. In this paper, we propose a modern, salable solution to create high quality survey-scale bathymetry from many sidescan lines. By incorporating multiple observations of the same place, results can be improved as the estimates reinforce each other. Our method is based on sinusoidal representation networks, a recent advance in neural representation learning. We demonstrate the scalability of the approach by producing bathymetry from a large sidescan survey. The resulting quality is demonstrated by comparing to data collected with a high-precision multibeam sensor.
翻译:侧扫描声纳是一种小的、成本效益高的遥感解决方案,可以很容易地安装在大多数船只上。 从历史上看,它一直被用于制作高清晰的图像,供专家用来确定海底或水柱上的目标。虽然已提出解决方案,只用侧扫描或与多波束一起进行测深,但效果有限。这部分是主要局限于单侧扫描线的结果。在本文中,我们提出了一个现代的、可分配的解决方案,以便从许多侧侧扫描线上建立高质量的测深测量尺度。通过对同一地点进行多次观测,结果可以随着估计的相互增强而得到改善。我们的方法以正弦图示网络为基础,这是最近一项神经图示学习的进展。我们通过从大侧扫描中进行测深来显示这一方法的可伸缩性。通过比较用高精度多波束传感器收集的数据,可以证明由此产生的质量。