Local region detector + CNN based landmarks for practical place recognition in changing environments

Peer Neubert, P. Protzel
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引用次数: 35

Abstract

Visual place recognition is a mature field in mobile robotics research. Recognizing places in datasets covering traversals of hundreds or thousands of kilometres and accurate localization in small and medium size environments have been successfully demonstrated. However, for real world long term operation, visual place recognition has to face severe environmental appearance changes due to day-night cycles, seasonal or weather changes. Existing approaches for recognizing places in such changing environments provide solutions for matching images from the exact same viewpoint using powerful holistic descriptors, using less sophisticated holistic descriptors in combinations with images sequences, and/or pose strong requirements on training data to learn systematic appearance changes. In this paper, we present a novel, training free, single image matching procedure that builds upon local region detectors for powerful Convolutional Neural Network (CNN) based descriptors. It can be used with a broad range of local region detectors including keypoints, segmentation based approaches and object proposals. We propose a novel evaluation criterion for selection of an appropriate local region detector for changing environments and compare several available detectors. The scale space extrema detector known from the SIFT keypoint detector in combination with appropriate magnification factors performs best. We present preliminary results of the proposed image matching procedure with several region detectors on the challenging Nordland dataset on place recognition between different seasons and a dataset including severe viewpoint changes. The proposed method outperforms the best existing holistic method for place recognition in such changing environments and can additionally handle severe viewpoint changes. Additionally, the combination of the best performing detectors with superpixel based spatial image support shows promising results.
局部区域检测器+基于CNN的地标,在不断变化的环境中进行实际的地点识别
视觉位置识别是移动机器人研究的一个成熟领域。在覆盖数百或数千公里的遍历数据集中识别位置,并在中小型环境中进行准确定位已经成功证明。然而,对于现实世界的长期操作,视觉位置识别必须面对昼夜周期、季节或天气变化等严重的环境外观变化。在这种不断变化的环境中识别位置的现有方法提供了使用强大的整体描述符从完全相同的视点匹配图像的解决方案,使用不太复杂的整体描述符与图像序列相结合,和/或对训练数据提出强烈要求以学习系统的外观变化。在本文中,我们提出了一种新颖的,无需训练的,基于局部区域检测器的基于强大卷积神经网络(CNN)描述符的单图像匹配过程。它可以与广泛的局部区域检测器一起使用,包括关键点,基于分割的方法和目标建议。我们提出了一种新的评估标准,用于选择适合变化环境的局部区域检测器,并比较了几种可用的检测器。从SIFT关键点检测器中已知的尺度空间极值检测器与适当的放大系数相结合的效果最好。在具有挑战性的Nordland数据集和包含严重视点变化的数据集上,我们提出了几种区域检测器的图像匹配程序的初步结果。该方法在这种变化的环境中优于现有最佳的整体位置识别方法,并且可以处理剧烈的视点变化。此外,将性能最好的探测器与基于超像素的空间图像支持相结合,显示出令人鼓舞的结果。
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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