点云
分割
计算机科学
云计算
标杆管理
变压器
人工智能
计算机视觉
对象(语法)
点(几何)
数据挖掘
实时计算
工程类
几何学
数学
营销
电压
电气工程
业务
操作系统
作者
Muhammad Ibrahim,Naveed Akhtar,Saeed Anwar,Ajmal Mian
标识
DOI:10.1109/tits.2023.3243643
摘要
Semantic segmentation of 3D point cloud is a key task in numerous intelligent transportation system applications, e.g., self-driving vehicles, traffic monitoring. Due to the sparsity and varying density of points in the outdoor point clouds, it becomes particularly challenging to extract object-centric features from data. This leads to poor semantic segmentation, especially for the rare object classes. To address that, we introduce the first-ever Slot Attention Transformer based technique to effectively model object-centric features in point cloud data. Our method uses cylindrical splits of space for voxelization and computes channel-wise positional embeddings before repetitively encoding the point cloud with slot attentions. Our second major contribution is a Large-Scale Outdoor Point Cloud dataset (SWAN), collected in a dense urban environment, driving 150km distance. It provides 16 billion points in more than 200K frames. The dataset also provides annotations for 10K frames for 24 classes. We also contribute a data augmentation scheme to handle rare object classes in real-world point clouds. Besides benchmarking popular existing methods on SWAN for the first time, we thoroughly evaluate our technique on the existing large-scale datasets, Semantic KITTI and nuScenes. Our results demonstrate a consistent performance gain for our technique, and verify the need of the more challenging SWAN dataset.
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