Indoor Localization and Mapping with 4D mmWave Imaging Radar - Robotics Institute Carnegie Mellon University
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MSR Thesis Defense

April

26
Fri
Jui-Te Huang Research Associate III Robotics Institute,
Carnegie Mellon University
Friday, April 26
1:30 pm to 3:00 pm
GHC 6501
Indoor Localization and Mapping with 4D mmWave Imaging Radar

Abstract:
State estimation is a crucial component for the successful implementation of robotic systems, relying on sensors such as cameras, LiDAR, and IMUs. However, in real-world scenarios, the performance of these sensors is degraded by challenging environments, e.g. adverse weather conditions and low-light scenarios. The emerging 4D imaging radar technology is capable of providing robust perception in adverse conditions. Despite its potential, challenges remain for indoor settings where noisy radar data does not present clear geometric features. Moreover, disparities in radar data resolution and field of view (FOV) can lead to inaccurate measurements. While prior research has explored radar-inertial odometry based on Doppler velocity information, challenges remain for the estimation of 3D motion because of the discrepancy in the FOV and resolution of the radar sensor. In this paper, we address Doppler velocity measurement uncertainties. We present a method to optimize body frame velocity while managing Doppler velocity uncertainty. Based on our observations, we propose a dual imaging radar configuration to mitigate the challenge of discrepancy in radar data. To attain high-precision 3D state estimation, we introduce a strategy that seamlessly integrates radar data with a consumer-grade IMU sensor using fixed-lag smoothing optimization. Finally, we evaluate our approach using real-world 3D motion data and demonstrate down stream tasks for localization and mapping.

Committee: 
Prof. Michael Kaess (chair)
Prof. Sebastian Scherer
Srinivasan Vijayarangan