TransLoc3D : Point Cloud based Large-scale Place Recognition using Adaptive Receptive Fields

Tianhan Xu, Yuanchen Guo, Yu-Kun Lai, Song-Hai Zhang
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引用次数: 20

Abstract

Place recognition plays an essential role in the field of autonomous driving and robot navigation. Point cloud based methods mainly focus on extracting global descriptors from local features of point clouds. Despite having achieved promising results, existing solutions neglect the following aspects, which may cause performance degradation: (1) huge size difference between objects in outdoor scenes; (2) moving objects that are unrelated to place recognition; (3) long-range contextual information. We illustrate that the above aspects bring challenges to extracting discriminative global descriptors. To mitigate these problems, we propose a novel method named TransLoc3D, utilizing adaptive receptive fields with a point-wise reweighting scheme to handle objects of different sizes while suppressing noises, and an external transformer to capture long-range feature dependencies. As opposed to existing architectures which adopt fixed and limited receptive fields, our method benefits from size-adaptive receptive fields as well as global contextual information, and outperforms current state-of-the-arts with significant improvements on popular datasets.
TransLoc3D:基于点云的大规模位置识别,使用自适应接受域
位置识别在自动驾驶和机器人导航领域起着至关重要的作用。基于点云的方法主要是从点云的局部特征中提取全局描述符。现有的解决方案虽然取得了不错的效果,但忽略了以下几个方面,可能会导致性能下降:(1)室外场景中物体之间的尺寸差异较大;(二)与地点识别无关的运动物体;(3)远程语境信息。我们说明了上述方面给判别性全局描述符的提取带来了挑战。为了缓解这些问题,我们提出了一种名为TransLoc3D的新方法,利用自适应接受场和点加权方案来处理不同大小的对象,同时抑制噪声,并使用外部变压器来捕获远程特征依赖关系。与采用固定和有限接受域的现有架构相反,我们的方法受益于大小自适应接受域以及全局上下文信息,并且在流行数据集上具有显着改进,优于当前最先进的技术。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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