@inproceedings{a547587d20d24fedb1b34e9d7b27109b,
title = "Identifying Unknown Instances for Autonomous Driving",
abstract = "In the past few years, we have seen great progress in perception algorithms, particular through the use of deep learning. However, most existing approaches focus on a few categories of interest, which represent only a small fraction of the potential categories that robots need to handle in the real-world. Thus, identifying objects from unknown classes remains a challenging yet crucial task. In this paper, we develop a novel open-set instance segmentation algorithm for point clouds which can segment objects from both known and unknown classes in a holistic way. Our method uses a deep convolutional neural network to project points into a category-agnostic embedding space in which they can be clustered into instances irrespective of their semantics. Experiments on two large-scale self-driving datasets validate the effectiveness of our proposed method.",
keywords = "Open-Set Perception, Instance Segmentation, Autonomous Driving",
author = "Kelvin Wong and Shenlong Wang and Mengye Ren and Ming Liang and Raquel Urtasun",
year = "2020",
month = jun,
day = "1",
language = "English (US)",
volume = "100",
series = "Proceedings of Machine Learning Research",
publisher = "PMLR",
pages = "384--393",
editor = "Kaelbling, {Leslie Pack} and Danica Kragic and Komei Sugiura",
booktitle = "Proceedings of the Conference on Robot Learning",
}