Semantic Segmentation Algorithm Based on Light Field and LiDAR Fusion
- URL: http://arxiv.org/abs/2510.06687v1
- Date: Wed, 08 Oct 2025 06:15:06 GMT
- Title: Semantic Segmentation Algorithm Based on Light Field and LiDAR Fusion
- Authors: Jie Luo, Yuxuan Jiang, Xin Jin, Mingyu Liu, Yihui Fan,
- Abstract summary: We propose the first multimodal semantic segmentation dataset integrating light field data and point cloud data.<n>Our method outperforms image-only segmentation by 1.71 Mean Intersection over Union(mIoU) and point cloud-only segmentation by 2.38 mIoU, demonstrating its effectiveness.
- Score: 23.0804908886806
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Semantic segmentation serves as a cornerstone of scene understanding in autonomous driving but continues to face significant challenges under complex conditions such as occlusion. Light field and LiDAR modalities provide complementary visual and spatial cues that are beneficial for robust perception; however, their effective integration is hindered by limited viewpoint diversity and inherent modality discrepancies. To address these challenges, the first multimodal semantic segmentation dataset integrating light field data and point cloud data is proposed. Based on this dataset, we proposed a multi-modal light field point-cloud fusion segmentation network(Mlpfseg), incorporating feature completion and depth perception to segment both camera images and LiDAR point clouds simultaneously. The feature completion module addresses the density mismatch between point clouds and image pixels by performing differential reconstruction of point-cloud feature maps, enhancing the fusion of these modalities. The depth perception module improves the segmentation of occluded objects by reinforcing attention scores for better occlusion awareness. Our method outperforms image-only segmentation by 1.71 Mean Intersection over Union(mIoU) and point cloud-only segmentation by 2.38 mIoU, demonstrating its effectiveness.
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