Stabilize an Unsupervised Feature Learning for LiDAR-based Place Recognition

Peng Yin, Lingyun Xu, Zhe Liu, Lu Li, Hadi Salman, Yuqing He, Weiliang Xu, Hesheng Wang, H. Choset
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引用次数: 15

Abstract

Place recognition is one of the major challenges for the LiDAR-based effective localization and mapping task. Traditional methods are usually relying on geometry matching to achieve place recognition, where a global geometry map need to be restored. In this paper, we accomplish the place recognition task based on an end-to-end feature learning framework with the LiDAR inputs. This method consists of two core modules, a dynamic octree mapping module that generates local 2D maps with the consideration of the robot's motion; and an unsupervised place feature learning module which is an improved adversarial feature learning network with additional assistance for the long-term place recognition requirement. More specially, in place feature learning, we present an additional Generative Adversarial Network with a designed Conditional Entropy Reduction module to stabilize the feature learning process in an unsupervised manner. We evaluate the proposed method on the Kitti dataset and North Campus Long-Term LiDAR dataset. Experimental results show that the proposed method outperforms state-of-the-art in place recognition tasks under long-term applications. What's more, the feature size and inference efficiency in the proposed method are applicable in real-time performance on practical robotic platforms.
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稳定基于激光雷达位置识别的无监督特征学习
位置识别是实现基于激光雷达的有效定位和测绘任务的主要挑战之一。传统的方法通常依靠几何匹配来实现位置识别,需要恢复全局的几何地图。在本文中,我们完成了基于端到端特征学习框架和激光雷达输入的位置识别任务。该方法包括两个核心模块:动态八叉树映射模块,根据机器人的运动轨迹生成局部二维地图;无监督的位置特征学习模块是一种改进的对抗特征学习网络,为长期的位置识别需求提供了额外的帮助。更具体地说,在特征学习方面,我们提出了一个附加的生成对抗网络,该网络具有设计的条件熵减少模块,以无监督的方式稳定特征学习过程。我们在Kitti数据集和North Campus长期激光雷达数据集上对该方法进行了评估。实验结果表明,在长期应用下,该方法优于当前的原位识别任务。此外,该方法的特征大小和推理效率适用于实际机器人平台的实时性能。
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