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Robust Visual Localization Across Seasons

Tayyab Naseer, Wolfram Burgard, Cyrill Stachniss

Year
2018
Citations
138

Abstract

Localization is an integral part of reliable robot navigation, and long-term autonomy requires robustness against perceptional changes in the environment during localization. In the context of vision-based localization, such changes can be caused by illumination variations, occlusion, structural development, different weather conditions, and seasons. In this paper, we present a novel approach for localizing a robot over longer periods of time using only monocular image data. We propose a novel data association approach for matching streams of incoming images to an image sequence stored in a database. Our method exploits network flows to leverage sequential information to improve the localization performance and to maintain several possible trajectories hypotheses in parallel. To compare images, we consider a semidense image description based on histogram of oriented gradients features as well as global descriptors from deep convolutional neural networks trained on ImageNet for robust localization. We perform extensive evaluations on a variety of datasets and show that our approach outperforms existing state-of-the-art approaches.

Keywords

Artificial intelligenceRobustness (evolution)Computer scienceLeverage (statistics)Computer visionHistogramMonocularConvolutional neural networkRobotPattern recognition (psychology)

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