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S$^2$MAT: Simultaneous and Self-Reinforced Mapping and Tracking in
  Dynamic Urban Scenariosorcing Framework for Simultaneous Mapping and Tracking
  in Unbounded Urban Environments

S2^22MAT: Simultaneous and Self-Reinforced Mapping and Tracking in Dynamic Urban Scenariosorcing Framework for Simultaneous Mapping and Tracking in Unbounded Urban Environments

27 April 2023
Tingxiang Fan
Bo Shen
Yinqiang Zhang
Chuye Zhang
Lei Yang
Hua Chen
Wei Zhang
Jianyi Pan
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Papers citing "S$^2$MAT: Simultaneous and Self-Reinforced Mapping and Tracking in Dynamic Urban Scenariosorcing Framework for Simultaneous Mapping and Tracking in Unbounded Urban Environments"

1 / 1 papers shown
Title
FAST-LIO: A Fast, Robust LiDAR-inertial Odometry Package by
  Tightly-Coupled Iterated Kalman Filter
FAST-LIO: A Fast, Robust LiDAR-inertial Odometry Package by Tightly-Coupled Iterated Kalman Filter
Wenyuan Xu
Fu Zhang
66
601
0
16 Oct 2020
1