96 research outputs found

    ROAMER: Robust Offroad Autonomy using Multimodal State Estimation with Radar Velocity Integration

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    Reliable offroad autonomy requires low-latency, high-accuracy state estimates of pose as well as velocity, which remain viable throughout environments with sub-optimal operating conditions for the utilized perception modalities. As state estimation remains a single point of failure system in the majority of aspiring autonomous systems, failing to address the environmental degradation the perception sensors could potentially experience given the operating conditions, can be a mission-critical shortcoming. In this work, a method for integration of radar velocity information in a LiDAR-inertial odometry solution is proposed, enabling consistent estimation performance even with degraded LiDAR-inertial odometry. The proposed method utilizes the direct velocity-measuring capabilities of an Frequency Modulated Continuous Wave (FMCW) radar sensor to enhance the LiDAR-inertial smoother solution onboard the vehicle through integration of the forward velocity measurement into the graph-based smoother. This leads to increased robustness in the overall estimation solution, even in the absence of LiDAR data. This method was validated by hardware experiments conducted onboard an all-terrain vehicle traveling at high speed, ~12 m/s, in demanding offroad environments

    Maritime Vessel Tank Inspection using Aerial Robots: Experience from the field and dataset release

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    This paper presents field results and lessons learned from the deployment of aerial robots inside ship ballast tanks. Vessel tanks including ballast tanks and cargo holds present dark, dusty environments having simultaneously very narrow openings and wide open spaces that create several challenges for autonomous navigation and inspection operations. We present a system for vessel tank inspection using an aerial robot along with its autonomy modules. We show the results of autonomous exploration and visual inspection in 3 ships spanning across 7 distinct types of sections of the ballast tanks. Additionally, we comment on the lessons learned from the field and possible directions for future work. Finally, we release a dataset consisting of the data from these missions along with data collected with a handheld sensor stick.Comment: Accepted to the IEEE ICRA Workshop on Field Robotics 202

    Replication Data for: Radar-Inertial ICP-based Pose Graph SLAM

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    This contains the data associated with a paper submission titled "Radar-Inertial ICP-based Pose Graph SLAM". The datasets contains IMU, cameras (2x), lidar, and fmcw radars (3x) which is sufficient for reproducing the results of the paper. See readme for more details

    Polarisation dependence and gain tilt of Raman amplifiers for WDM systems

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