ViFusion: Enhanced 3D object detection via virtual point augmentation and dynamic multi-source feature fusion


Song S. Xiang Z. Ilyas M. Wu F. Gong Y.
June 2026Elsevier B.V.

Results in Engineering
2026#30

Due to the sparsity of point clouds, the performance of 3D object detection in autonomous driving is significantly limited. Recent methods employ depth completion networks to generate virtual points for enhancing object representations. However, the high density and noise of these virtual points result in higher resource consumption during training, further exacerbating computational complexity, particularly in multi-source feature fusion scenarios. To address these challenges, an efficient optimization framework, ViFusion (Virtual-enhanced Feature Fusion), is proposed. This framework comprises two key components: VPA (Virtual Point Augmentor) and DMF (Dynamic Multi-Source Feature Fusion). Before feature extraction, VPA enhances key points in dense virtual point clouds through an improved clustering algorithm, efficiently generating high-precision points that significantly enrich object representations. Following feature extraction, DMF dynamically assigns weights to features from multiple sources via a set of pre-designed Multi-Layer Perceptrons (MLP), avoiding complex network designs, thereby enabling efficient fusion while mitigating computational overhead. Compared with existing methods, both modules have shown good results on multiple basic detectors. VPA has excellent accuracy performance and can be effectively combined with the traditional data enhancement method Ground Truth Augmentation (GT-Aug) to achieve better performance. DMF provides excellent performance increase with less resource consumption. The two can be effectively combined, integrating both VPA and DMF into CasA-V (Cascaded attention applied to Voxel-RCNN) which yields the best performance, achieving an AP of 76.65% in detecting medium-difficulty cyclist categories in the KITTI validation set.

3D object detection , Autonomous driving , Feature fusion , Instance augmentation , Virtual point augmentation

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Shanghai Polytechnic University, Shanghai, 201209, China
Kazakh-British Technical University, Almaty, 050000, Kazakhstan
Southeast University, Nanjing, 211189, China

Shanghai Polytechnic University
Kazakh-British Technical University
Southeast University

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