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LeAD-M3D: Leveraging Asymmetric Distillation for Real-time Monocular 3D Detection

About

Real-time monocular 3D object detection remains challenging due to severe depth ambiguity, viewpoint shifts, and the high computational cost of 3D reasoning. Existing approaches either rely on LiDAR or geometric priors to compensate for missing depth, or sacrifice efficiency to achieve competitive accuracy. We introduce LeAD-M3D, a monocular 3D detector that achieves state-of-the-art accuracy and real-time inference without extra modalities. Our method is powered by three key components. Asymmetric Augmentation Denoising Distillation (A2D2) transfers geometric knowledge from a clean-image teacher to a mixup-noised student via a quality- and importance-weighted depth-feature loss, enabling stronger depth reasoning without LiDAR supervision. 3D-aware Consistent Matching (CM3D) improves prediction-to-ground truth assignment by integrating 3D MGIoU into the matching score, yielding more stable and precise supervision. Finally, Confidence-Gated 3D Inference (CGI3D) accelerates detection by restricting expensive 3D regression to top-confidence regions. Together, these components set a new Pareto frontier for monocular 3D detection: LeAD-M3D achieves state-of-the-art accuracy on KITTI and Waymo, and the best reported car AP on Rope3D, while running up to 3.6x faster than prior high-accuracy methods. Our results demonstrate that high fidelity and real-time efficiency in monocular 3D detection are simultaneously attainable - without LiDAR, stereo, or geometric assumptions.

Johannes Meier, Jonathan Michel, Oussema Dhaouadi, Yung-Hsu Yang, Christoph Reich, Zuria Bauer, Stefan Roth, Marc Pollefeys, Jacques Kaiser, Daniel Cremers• 2025

Related benchmarks

TaskDatasetResultRank
3D Object DetectionKITTI car (test)--
195
3D Object DetectionWaymo Open Dataset (val)--
175
Bird's Eye View (BEV) DetectionKITTI Cars (IoU3D ≥ 0.7) (test)
APBEV R40 (Easy)38.33
52
Monocular 3D Object DetectionKITTI car category (val)
AP 3D (R40)22.94
37
3D Object DetectionRope3D (val)
AP (IoU=0.5, Car)49.5
31
Monocular 3D Object DetectionWaymo Open Dataset 79 (val)
AP@0.5 (3D, L1)1.65e+3
24
Monocular 3D Object DetectionKITTI car category (test)
AP3D (Easy)30.76
19
3D Object DetectionRope3D Car category heterologous benchmark (test)
AP16.45
18
3D Object DetectionRope3D Big Vehicle category heterologous benchmark (test)
AP8.71
18
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