Condition and Viewpoint Invariant Omni-Directional Place Recognition Using CNN

Devinder Kumar, H. Neher, Arun Das, David A Clausi, Steven L. Waslander
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引用次数: 3

Abstract

Robust place recognition systems are essential for long term localization and autonomy. Such systems should recognize scenes with both conditional and viewpoint changes. In this paper, we present a deep learning based planar omni-directional place recognition approach that can simultaneously cope with conditional and viewpoint variations, including large viewpoint changes, which current methods do not address. We evaluate the proposed method on two real world datasets dealing with illumination, seasonal/weather changes and changes occurred in the environment across a period of 1 year, respectively. We provide both quantitative (recall at 100% precision) and qualitative (confusion matrices) comparison of the basic pipeline of place recognition for the omni-directional approach with single-view and side-view camera approaches. The results prove the efficacy of the proposed omnidirectional deep learning method over the single-view and side-view cameras in dealing with both conditional and large viewpoint changes.
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基于CNN的条件和视点不变全向位置识别
强大的位置识别系统对于长期定位和自主至关重要。这样的系统应该能够识别有条件和视点变化的场景。在本文中,我们提出了一种基于深度学习的平面全方位位置识别方法,该方法可以同时处理条件和视点变化,包括大视点变化,这是当前方法无法解决的。我们在两个真实世界的数据集上对所提出的方法进行了评估,这些数据集分别处理了照明、季节/天气变化和1年期间环境发生的变化。我们提供了定量的(100%精确召回率)和定性的(混淆矩阵)对全向方法与单视图和侧视图相机方法的位置识别的基本管道进行比较。结果证明了所提出的全方位深度学习方法在处理条件和大视点变化方面优于单视图和侧视图相机。
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