Simultaneous Localization and Mapping (SLAM) plays an important role in outdoor and indoor applications ranging from autonomous driving to indoor robotics. Outdoor SLAM has been widely used with the assistance of LiDAR or GPS. For indoor applications, the LiDAR technique does not satisfy the accuracy requirement and the GPS signals will be lost. An accurate and efficient scene sensing technique is required for indoor SLAM. As the most promising 3D sensing technique, the opportunities for indoor SLAM with fringe projection profilometry (FPP) systems are obvious, but methods to date have not fully leveraged the accuracy and speed of sensing that such systems offer. In this paper, we propose a novel FPP-based indoor SLAM method based on the coordinate transformation relationship of FPP, where the 2D-to-3D descriptor-assisted is used for mapping and localization. The correspondences generated by matching descriptors are used for fast and accurate mapping, and the transform estimation between the 2D and 3D descriptors is used to localize the sensor. The provided experimental results demonstrate that the proposed indoor SLAM can achieve the localization and mapping accuracy around one millimeter.
翻译:同时定位和绘图(SLAM)在从自动驾驶到室内机器人的室内和室内应用中发挥着重要作用,从自动驾驶到室内机器人。在LiDAR或全球定位系统的协助下,SLAM在室内应用中被广泛使用。对于室内应用,LiDAR技术不能满足准确性要求,全球定位系统信号将丢失。室内SLAM需要准确有效的现场遥感技术。由于最有希望的3D遥感技术,室内SLAM与边缘投影分解(FPP)系统的机会显而易见,但迄今为止,各种方法尚未充分利用这些系统提供的测测的准确性和速度。我们在本文件中提议基于FPPP的协调转换关系的基于FPPP的新型内部SLAM方法,其中2D至3D描述仪辅助的描述仪用于绘图和定位。匹配描述仪生成的通信用于快速和准确的绘图,2D和3D描述仪之间的转换估计用于传感器的本地化。提供的实验结果表明,拟议的室内SLAMM能够实现1毫米周围的本地化和绘图精确性。