Accurate, self-consistent bathymetric maps are needed to monitor changes in subsea environments and infrastructure. These maps are increasingly collected by underwater vehicles, and mapping requires an accurate vehicle navigation solution. Commercial off-the-shelf (COTS) navigation solutions for underwater vehicles often rely on external acoustic sensors for localization, however survey-grade acoustic sensors are expensive to deploy and limit the range of the vehicle. Techniques from the field of simultaneous localization and mapping, particularly loop closures, can improve the quality of the navigation solution over dead-reckoning, but are difficult to integrate into COTS navigation systems. This work presents a method to improve the self-consistency of bathymetric maps by smoothly integrating loop-closure measurements into the state estimate produced by a commercial subsea navigation system. Integration is done using a white-noise-on-acceleration motion prior, without access to raw sensor measurements or proprietary models. Improvements in map self-consistency are shown for both simulated and experimental datasets, including a 3D scan of an underwater shipwreck in Wiarton, Ontario, Canada.
翻译:为了监测海底环境和基础设施的变化,需要有精确、自相符合的测深图,监测海底环境和基础设施的变化,这些地图越来越多地由水下车辆收集,绘图需要精确的车辆导航解决方案;水下车辆的现成商业导航解决方案往往依靠外部声学传感器进行本地化,然而,调查级声学传感器在部署和限制车辆范围方面费用高昂;同时定位和绘图领域的技术,特别是环形封闭技术,可以提高对死沉降的导航解决方案的质量,但难以融入COTS导航系统;这项工作通过将环形测量顺利纳入商业海下导航系统产生的国家估计,从而改进测深图的自惯性;整合工作在进行之前就采用白噪音即加速运动,没有原始传感器测量或专有模型;对模拟和实验性数据集,包括加拿大安大略省Wiarton的水下船沉船故障进行3D扫描,显示地图自相兼容性改进。