Uni-to-Multi Modal Knowledge Distillation for Bidirectional LiDAR-Camera Semantic Segmentation

Tianfang Sun;Zhizhong Zhang;Xin Tan;Yong Peng;Yanyun Qu;Yuan Xie
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Abstract

Combining LiDAR points and images for robust semantic segmentation has shown great potential. However, the heterogeneity between the two modalities (e.g. the density, the field of view) poses challenges in establishing a bijective mapping between each point and pixel. This modality alignment problem introduces new challenges in network design and data processing for cross-modal methods. Specifically, 1) points that are projected outside the image planes; 2) the complexity of maintaining geometric consistency limits the deployment of many data augmentation techniques. To address these challenges, we propose a cross-modal knowledge imputation and transition approach. First, we introduce a bidirectional feature fusion strategy that imputes missing image features and performs cross-modal fusion simultaneously. This allows us to generate reliable predictions even when images are missing. Second, we propose a Uni-to-Multi modal Knowledge Distillation (U2MKD) framework, leveraging the transfer of informative features from a single-modality teacher to a cross-modality student. This overcomes the issues of augmentation misalignment and enables us to train the student effectively. Extensive experiments on the nuScenes, Waymo, and SemanticKITTI datasets demonstrate the effectiveness of our approach. Notably, our method achieves an 8.3 mIoU gain over the LiDAR-only baseline on the nuScenes validation set and achieves state-of-the-art performance on the three datasets.
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用于双向激光雷达-相机语义分割的单模到多模知识提炼
结合激光雷达点和图像进行稳健的语义分割已显示出巨大的潜力。然而,两种模态之间的异质性(如密度、视场)给在每个点和像素之间建立双射映射带来了挑战。这种模态对齐问题给跨模态方法的网络设计和数据处理带来了新的挑战。具体来说,1)投射到图像平面之外的点;2)保持几何一致性的复杂性限制了许多数据增强技术的部署。为了应对这些挑战,我们提出了一种跨模态知识归因和转换方法。首先,我们引入了一种双向特征融合策略,该策略可估算缺失的图像特征,并同时执行跨模态融合。这样,即使图像缺失,我们也能生成可靠的预测结果。其次,我们提出了单模态到多模态知识蒸馏(U2MKD)框架,利用信息特征从单模态教师转移到跨模态学生。这克服了增强不对齐的问题,使我们能够有效地训练学生。在 nuScenes、Waymo 和 SemanticKITTI 数据集上进行的大量实验证明了我们方法的有效性。值得注意的是,在 nuScenes 验证集上,我们的方法比仅使用激光雷达的基线方法获得了 8.3 mIoU 的增益,并在这三个数据集上实现了最先进的性能。
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