ETRI Journal | |
ETLi: Efficiently annotated traffic LiDAR dataset using incremental and suggestive annotation | |
关键词: autonomous driving; deep‐learning dataset; light detection and ranging; semantic segmentation; semantic simultaneous localization and mapping; | |
DOI : 10.4218/etrij.2021-0055 | |
来源: DOAJ |
【 摘 要 】
Autonomous driving requires a computerized perception of the environment for safety and machine‐learning evaluation. Recognizing semantic information is difficult, as the objective is to instantly recognize and distinguish items in the environment. Training a model with real‐time semantic capability and high reliability requires extensive and specialized datasets. However, generalized datasets are unavailable and are typically difficult to construct for specific tasks. Hence, a light detection and ranging semantic dataset suitable for semantic simultaneous localization and mapping and specialized for autonomous driving is proposed. This dataset is provided in a form that can be easily used by users familiar with existing two‐dimensional image datasets, and it contains various weather and light conditions collected from a complex and diverse practical setting. An incremental and suggestive annotation routine is proposed to improve annotation efficiency. A model is trained to simultaneously predict segmentation labels and suggest class‐representative frames. Experimental results demonstrate that the proposed algorithm yields a more efficient dataset than uniformly sampled datasets.
【 授权许可】
Unknown