4.6 Article

P2SLAM: Bearing Based WiFi SLAM for Indoor Robots

Journal

IEEE ROBOTICS AND AUTOMATION LETTERS
Volume 7, Issue 2, Pages 3326-3333

Publisher

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/LRA.2022.3144796

Keywords

Sensor fusion; SLAM; localization

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The recent interest in indoor robotics has highlighted the importance of robust simultaneous localization and mapping algorithms. This letter proposes the use of WiFi as a robust sensing modality to address the deficiencies of exteroceptive sensors in structured environments. The results show that integrating WiFi features with odometry significantly improves the system performance and performs on par with state-of-the-art Visual-based SLAM.
A recent spur of interest in indoor robotics has increased the importance of robust simultaneous localization and mapping algorithms in indoor scenarios. This robustness is typically provided by the use of multiple sensors which can correct each others' deficiencies. In this vein, exteroceptive sensors, like cameras and LiDAR's, employed for fusion are capable of correcting the drifts accumulated by wheel odometry or inertial measurement units (IMU's). However, these exteroceptive sensors are deficient in highly structured environments and dynamic lighting conditions. This letter will present WiFi as a robust and straightforward sensing modality capable of circumventing these issues. Specifically, we make three contributions. First, we will understand the necessary features to be extracted from WO signals. Second, we characterize the quality of these measurements. Third, we integrate these features with odometry into a state-of-art GraphSLAM backend. We present our results in a 25 x 30 m and 50 x 40 environment and robustly test the system by driving the robot a cumulative distance of over 1225 m in these two environments. We show an improvement of at least 6 x compared odometry-only estimation and perform on par with one of the state-of-the-art Visual-based SLAM.

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