Visual Place Recognition (VPR) is the process of recognising a previously visited place using visual information, often under varying appearance conditions and viewpoint changes and with computational constraints. VPR is related to the concepts of localisation, loop closure, image retrieval and is a critical component of many autonomous navigation systems ranging from autonomous vehicles to drones and computer vision systems. While the concept of place recognition has been around for many years, VPR research has grown rapidly as a field over the past decade due to improving camera hardware and its potential for deep learning-based techniques, and has become a widely studied topic in both the computer vision and robotics communities. This growth however has led to fragmentation and a lack of standardisation in the field, especially concerning performance evaluation. Moreover, the notion of viewpoint and illumination invariance of VPR techniques has largely been assessed qualitatively and hence ambiguously in the past. In this paper, we address these gaps through a new comprehensive open-source framework for assessing the performance of VPR techniques, dubbed "VPR-Bench". VPR-Bench (Open-sourced at: https://github.com/MubarizZaffar/VPR-Bench) introduces two much-needed capabilities for VPR researchers: firstly, it contains a benchmark of 12 fully-integrated datasets and 10 VPR techniques, and secondly, it integrates a comprehensive variation-quantified dataset for quantifying viewpoint and illumination invariance. We apply and analyse popular evaluation metrics for VPR from both the computer vision and robotics communities, and discuss how these different metrics complement and/or replace each other, depending upon the underlying applications and system requirements.
翻译:视觉定位识别(VPR)是利用视觉信息承认以前访问过的一个地方的过程,通常在不同的外观条件和观点变化以及计算限制下进行。VPR与本地化、环闭、图像检索的概念有关,是许多自主导航系统的关键组成部分,从自主飞行器到无人驾驶飞机和计算机视觉系统不等。虽然地点识别的概念已经存在多年,但过去十年来VPR研究作为一个领域迅速发展成为一个领域,原因是改进了相机硬件及其在深层次学习技术方面的潜力,并已成为计算机视觉和机器人社区广泛研究的一个专题。然而,这种增长导致外地的分散和缺乏标准化,特别是在绩效评估方面。此外,对VPR技术的视觉和明化概念概念概念已经进行了定性评估,因此在过去十年中,我们通过一个新的综合开放源框架来弥补了这些差距,用于评估VPR技术的性能,被调换了“VPR-Bench” 。 VPR-ench(公开来源为: https://girub.com/Mubariz-Zafar) 基础性、VIS-se-developyal 和VDIS-deal-deal-listrations) 系统-listal-lish 的每一种、Vx-lish-lish-vical-listal-listal-vical-vical-vical-listal-vical-vical-view, view vical-vical-vical-vical-vical-vical-vical-vical-view, vical-vical-vical-vical-victal-victal-vical-vical-vical-vical-vical-vical-vical-vical-vics,这些系统,这些系统和制, vical-vical-vical-vical-vical-vical-vical-vical-vical-vical-vical-vical-vical-s,我们,我们,我们,我们,我们,我们,我们,我们用的这些系统/bal-s-s,我们数据库和