A Dataset for Benchmarking Image-Based Localization

Xun Sun, Yuanfan Xie, Peiwen Luo, Liang Wang
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引用次数: 44

Abstract

A novel dataset for benchmarking image-based localization is presented. With increasing research interests in visual place recognition and localization, several datasets have been published in the past few years. One of the evident limitations of existing datasets is that precise ground truth camera poses of query images are not available in a meaningful 3D metric system. This is in part due to the underlying 3D models of these datasets are reconstructed from Structure from Motion methods. So far little attention has been paid to metric evaluations of localization accuracy. In this paper we address the problem of whether state-of-the-art visual localization techniques can be applied to tasks with demanding accuracy requirements. We acquired training data for a large indoor environment with cameras and a LiDAR scanner. In addition, we collected over 2000 query images with cell phone cameras. Using LiDAR point clouds as a reference, we employed a semi-automatic approach to estimate the 6 degrees of freedom camera poses precisely in the world coordinate system. The proposed dataset enables us to quantitatively assess the performance of various algorithms using a fair and intuitive metric.
基于图像的定位基准数据集
提出了一种新的基于图像的定位基准数据集。随着人们对视觉位置识别和定位的研究兴趣的增加,在过去的几年里已经发表了一些数据集。现有数据集的一个明显限制是,查询图像的精确地真相机姿态无法在有意义的三维度量系统中获得。这部分是由于这些数据集的底层3D模型是从结构运动方法重建的。迄今为止,定位精度的度量评价很少受到重视。在本文中,我们讨论了最先进的视觉定位技术是否可以应用于具有苛刻精度要求的任务。我们通过摄像头和激光雷达扫描仪获得了大型室内环境的训练数据。此外,我们用手机相机收集了2000多张查询图像。以LiDAR点云为参考,采用半自动方法在世界坐标系下精确估计6个自由度的相机姿态。提出的数据集使我们能够使用公平和直观的度量来定量评估各种算法的性能。
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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