Exploring Domain Shift on Radar-Based 3D Object Detection Amidst Diverse Environmental Conditions
The rapid evolution of deep learning and its integration with autonomous driving systems have led to substantial advancements in 3D perception using multimodal sensors. Notably, radar sensors show greater robustness compared to cameras and lidar under adverse weather and varying illumination conditi...
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Zusammenfassung: | The rapid evolution of deep learning and its integration with autonomous
driving systems have led to substantial advancements in 3D perception using
multimodal sensors. Notably, radar sensors show greater robustness compared to
cameras and lidar under adverse weather and varying illumination conditions.
This study delves into the often-overlooked yet crucial issue of domain shift
in 4D radar-based object detection, examining how varying environmental
conditions, such as different weather patterns and road types, impact 3D object
detection performance. Our findings highlight distinct domain shifts across
various weather scenarios, revealing unique dataset sensitivities that
underscore the critical role of radar point cloud generation. Additionally, we
demonstrate that transitioning between different road types, especially from
highways to urban settings, introduces notable domain shifts, emphasizing the
necessity for diverse data collection across varied road environments. To the
best of our knowledge, this is the first comprehensive analysis of domain shift
effects on 4D radar-based object detection. We believe this empirical study
contributes to understanding the complex nature of domain shifts in radar data
and suggests paths forward for data collection strategy in the face of
environmental variability. |
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DOI: | 10.48550/arxiv.2408.06772 |