Radar Velocity Transformer: Single-scan Moving Object Segmentation in Noisy Radar Point Clouds
Matthias Zeller, Vardeep S. Sandhu, Benedikt Mersch, Jens Behley, Michael Heidingsfeld, Cyrill Stachniss

TL;DR
This paper introduces a transformer-based method for accurately segmenting moving objects in noisy radar point clouds from a single scan, leveraging velocity information without temporal data, suitable for autonomous vehicle perception.
Contribution
It presents a novel single-scan moving object segmentation approach using transformers that incorporate velocity data, along with a new benchmark dataset for evaluation.
Findings
Outperforms state-of-the-art methods in accuracy.
Operates faster than the radar frame rate.
Effectively differentiates moving and parked objects.
Abstract
The awareness about moving objects in the surroundings of a self-driving vehicle is essential for safe and reliable autonomous navigation. The interpretation of LiDAR and camera data achieves exceptional results but typically requires to accumulate and process temporal sequences of data in order to extract motion information. In contrast, radar sensors, which are already installed in most recent vehicles, can overcome this limitation as they directly provide the Doppler velocity of the detections and, hence incorporate instantaneous motion information within a single measurement. % In this paper, we tackle the problem of moving object segmentation in noisy radar point clouds. We also consider differentiating parked from moving cars, to enhance scene understanding. Instead of exploiting temporal dependencies to identify moving objects, we develop a novel transformer-based approach to…
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