Mono3DV: Monocular 3D Object Detection with 3D-Aware Bipartite Matching and Variational Query DeNoising
- URL: http://arxiv.org/abs/2601.01036v1
- Date: Sat, 03 Jan 2026 02:06:28 GMT
- Title: Mono3DV: Monocular 3D Object Detection with 3D-Aware Bipartite Matching and Variational Query DeNoising
- Authors: Kiet Dang Vu, Trung Thai Tran, Kien Nguyen Do Trung, Duc Dung Nguyen,
- Abstract summary: Mono3DV is a novel Transformer-based framework for 3D object detection.<n>We develop a 3D-Aware Bipartite Matching strategy that directly incorporates 3D geometric information into the matching cost.<n>Second, it is important to stabilize the Bipartite Matching to resolve the instability occurring when integrating 3D attributes.
- Score: 0.6423989407081764
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: While DETR-like architectures have demonstrated significant potential for monocular 3D object detection, they are often hindered by a critical limitation: the exclusion of 3D attributes from the bipartite matching process. This exclusion arises from the inherent ill-posed nature of 3D estimation from monocular image, which introduces instability during training. Consequently, high-quality 3D predictions can be erroneously suppressed by 2D-only matching criteria, leading to suboptimal results. To address this, we propose Mono3DV, a novel Transformer-based framework. Our approach introduces three key innovations. First, we develop a 3D-Aware Bipartite Matching strategy that directly incorporates 3D geometric information into the matching cost, resolving the misalignment caused by purely 2D criteria. Second, it is important to stabilize the Bipartite Matching to resolve the instability occurring when integrating 3D attributes. Therefore, we propose 3D-DeNoising scheme in the training phase. Finally, recognizing the gradient vanishing issue associated with conventional denoising techniques, we propose a novel Variational Query DeNoising mechanism to overcome this limitation, which significantly enhances model performance. Without leveraging any external data, our method achieves state-of-the-art results on the KITTI 3D object detection benchmark.
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