In many autonomous mapping tasks, the maps cannot be accurately constructed due to various reasons such as sparse, noisy, and partial sensor measurements. We propose a novel map prediction method built upon the recent success of Low-Rank Matrix Completion. The proposed map prediction is able to achieve both map interpolation and extrapolation on raw poor-quality maps with missing or noisy observations. We validate with extensive simulated experiments that the approach can achieve real-time computation for large maps, and the performance is superior to the state-of-the-art map prediction approach - Bayesian Hilbert Mapping in terms of mapping accuracy and computation time. Then we demonstrate that with the proposed real-time map prediction framework, the coverage convergence rate (per action step) for a set of representative coverage planning methods commonly used for environmental modeling and monitoring tasks can be significantly improved.
翻译:在许多自主制图任务中,由于诸如稀少、吵闹和部分传感器测量等各种原因,无法准确绘制地图。我们提议了一种基于最近成功完成低兰克矩阵的新的地图预测方法。拟议的地图预测既可以实现地图的内插,也可以在原始的低质量地图上进行外推,同时进行缺失或噪音观测。我们通过广泛的模拟实验证实,该方法可以实现大地图的实时计算,而且其性能在绘图准确性和计算时间方面优于最先进的地图预测方法-巴伊西亚·希尔伯特绘图。然后我们证明,根据拟议的实时地图预测框架,一套通常用于环境建模和监测任务的有代表性的覆盖规划方法的覆盖率(每步)可以大大改进。