Feb. 13, 2024, 5:48 a.m. | Yujun Chen Xin Tan Zhizhong Zhang Yanyun Qu Yuan Xie

cs.CV updates on arXiv.org arxiv.org

As the exorbitant expense of labeling autopilot datasets and the growing trend of utilizing unlabeled data, semi-supervised segmentation on point clouds becomes increasingly imperative. Intuitively, finding out more ``unspoken words'' (i.e., latent instance information) beyond the label itself should be helpful to improve performance. In this paper, we discover two types of latent labels behind the displayed label embedded in LiDAR and image data. First, in the LiDAR Branch, we propose a novel augmentation, Cylinder-Mix, which is able to augment …

autopilot beyond cloud cs.cv data datasets information instance labeling labels paper performance segmentation semi-supervised trend words

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