UniDA3D: A Unified Domain-Adaptive Framework for Multi-View 3D Object Detection
Hongjing Wu, Cheng Chi, Jinlin Wu, Yanzhao Su, Zhen Lei, Wenqi Ren

TL;DR
UniDA3D is a unified domain-adaptive framework for multi-view 3D object detection that maintains robustness across diverse adverse weather conditions by leveraging domain adaptation and teacher-student training.
Contribution
It introduces a novel query guided domain discrepancy mitigation module and a unified training pipeline for robust multi-condition 3D detection.
Findings
Outperforms state-of-the-art detectors under extreme conditions.
Achieves substantial gains in mAP and NDS on synthesized benchmarks.
Maintains real-time inference efficiency.
Abstract
Camera-only 3D object detection is critical for autonomous driving, offering a cost-effective alternative to LiDAR based methods. In particular, multi-view 3D object detection has emerged as a promising direction due to its balanced trade-off between performance and cost. However, existing methods often suffer significant performance degradation under complex environmental conditions such as nighttime, fog, and rain, primarily due to their reliance on training data collected mostly in ideal conditions. To address this challenge, we propose UniDA3D, a unified domain-adaptive multi-view 3D object detector designed for robust perception under diverse adverse conditions. UniDA3D formulates nighttime, rainy, and foggy scenes as a unified multi target domain adaptation problem and leverages a novel query guided domain discrepancy mitigation (QDDM) module to align object features between…
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