用于场所分类的多模态全景3D户外数据集 / Multi-modal panoramic 3D outdoor datasets for place categorization
1️⃣ 一句话总结
这篇论文创建并公开了两个多模态全景3D户外数据集,分别包含密集和稀疏的点云数据,用于对森林、海岸、住宅区等六类场所进行自动分类,并展示了在这些数据集上最高可达96.42%和89.67%的分类准确率。
We present two multi-modal panoramic 3D outdoor (MPO) datasets for semantic place categorization with six categories: forest, coast, residential area, urban area and indoor/outdoor parking lot. The first dataset consists of 650 static panoramic scans of dense (9,000,000 points) 3D color and reflectance point clouds obtained using a FARO laser scanner with synchronized color images. The second dataset consists of 34,200 real-time panoramic scans of sparse (70,000 points) 3D reflectance point clouds obtained using a Velodyne laser scanner while driving a car. The datasets were obtained in the city of Fukuoka, Japan and are publicly available in [1], [2]. In addition, we compare several approaches for semantic place categorization with best results of 96.42% (dense) and 89.67% (sparse).
用于场所分类的多模态全景3D户外数据集 / Multi-modal panoramic 3D outdoor datasets for place categorization
这篇论文创建并公开了两个多模态全景3D户外数据集,分别包含密集和稀疏的点云数据,用于对森林、海岸、住宅区等六类场所进行自动分类,并展示了在这些数据集上最高可达96.42%和89.67%的分类准确率。
源自 arXiv: 2604.13142