Radarize: Large-Scale Radar SLAM for Indoor Environments
Sie, Emerson, Wu, Xinyu, Guo, Heyu, Vasisht, Deepak
–arXiv.org Artificial Intelligence
We present Radarize, a self-contained SLAM pipeline for indoor environments that uses only a low-cost commodity single-chip mmWave radar. Our radar-native approach leverages phenomena unique to radio frequencies, such as doppler shift-based odometry, to improve performance. We evaluate our method on a large-scale dataset of 146 trajectories spanning 4 campus buildings, totaling approximately 4680m of travel distance. Our results show that our method outperforms state-of-the-art radar-based approaches by approximately 5x in terms of odometry and 8x in terms of end-to-end SLAM, as measured by absolute trajectory error (ATE), without the need additional sensors such as IMUs or wheel odometry.
arXiv.org Artificial Intelligence
Nov-19-2023
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