Autonomous robots operating in indoor and GPS denied environments can use LiDAR for SLAM instead. However, LiDARs do not perform well in geometrically-degraded environments, due to the challenge of loop closure detection and computational load to perform scan matching. Existing WiFi infrastructure can be exploited for localization and mapping with low hardware and computational cost. Yet, accurate pose estimation using WiFi is challenging as different signal values can be measured at the same location due to the unpredictability of signal propagation. Therefore, we introduce the use of WiFi fingerprint sequence for pose estimation (i.e. loop closure) in SLAM. This approach exploits the spatial coherence of location fingerprints obtained while a mobile robot is moving. This has better capability of correcting odometry drift. The method also incorporates LiDAR scans and thus, improving computational efficiency for large and geometrically-degraded environments while maintaining the accuracy of LiDAR SLAM. We conducted experiments in an indoor environment to illustrate the effectiveness of the method. The results are evaluated based on Root Mean Square Error (RMSE) and it has achieved an accuracy of 0.88m for the test environment.
翻译:在室内和GPS被否定的环境中运作的自主机器人可以使用LiDAR来代替SLAM,然而,LiDAR在几何降解环境中表现不佳,因为环闭探测和计算负荷以进行扫描匹配的挑战;现有的WiFi基础设施可用于本地化和绘图,硬件成本和计算成本较低;然而,使用WiFi进行准确的估算具有挑战性,因为由于信号传播的不可预测性,可以在同一地点测量不同的信号值;因此,我们在SLAM采用WiFi指纹序列来进行配置估计(即环闭)。这种方法利用了在移动机器人移动时获得的位置指纹的空间一致性。这种方法具有更好的能力,可以纠正odorography 漂移,该方法还包含LiDAR扫描,从而提高了大型和几何测量退化环境的计算效率,同时保持LiDAR SLAM的准确性。我们在室内环境进行了实验,以说明方法的有效性。根据原始平方错误(RMSE)对结果进行了评估,并实现了测试环境的精确度为0.88米。