For a robot deployed in the world, it is desirable to have the ability of autonomous learning to improve its initial pre-set knowledge. We formalize this as a bootstrapped self-supervised learning problem where a system is initially bootstrapped with supervised training on a labeled dataset and we look for a self-supervised training method that can subsequently improve the system over the supervised training baseline using only unlabeled data. In this work, we leverage temporal consistency between frames in monocular video to perform this bootstrapped self-supervised training. We show that a well-trained state-of-the-art semantic segmentation network can be further improved through our method. In addition, we show that the bootstrapped self-supervised training framework can help a network learn depth estimation better than pure supervised training or self-supervised training.
翻译:对于世界上部署的机器人来说,最好能够自主学习,以改进其最初的预设知识。我们将此正式确定为一个自监管的自监管学习问题,即一个最初在标签数据集上接受监督培训的系统,最初在标签数据集上接受监督培训,我们寻找一种自我监管的培训方法,该方法可以随后仅使用未贴标签的数据,在监督培训基线上改进系统。在这项工作中,我们利用单视视频框架之间的时间一致性来进行这一自监管的自监管培训。我们表明,通过我们的方法,可以进一步改进经过良好训练的最先进的语义分割网络。此外,我们表明,自监管的培训框架可以帮助网络学习比纯监管的培训或自我监管的培训更好的深度估计。