首页 /研究 /The Oxford Road Boundaries Dataset
OTHER

The Oxford Road Boundaries Dataset

Tarlan Suleymanov, Matthew Gadd, Daniele De Martini, Paul Newman

发表年份
2021
访问权限
开放获取

摘要

In this paper we present the Oxford Road Boundaries Dataset, designed for training and testing machine-learning-based road-boundary detection and inference approaches. We have hand-annotated two of the 10 km-long forays from the Oxford Robotcar Dataset and generated from other forays several thousand further examples with semi-annotated road-boundary masks. To boost the number of training samples in this way, we used a vision-based localiser to project labels from the annotated datasets to other traversals at different times and weather conditions. As a result, we release 62605 labelled samples, of which 47639 samples are curated. Each of these samples contains both raw and classified masks for left and right lenses. Our data contains images from a diverse set of scenarios such as straight roads, parked cars, junctions, etc. Files for download and tools for manipulating the labelled data are available at: oxford-robotics-institute.github.io/road-boundaries-dataset

关键词

cs.CVcs.RO

相关论文

查看 OTHER 分类全部论文