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Learning Matchable Image Transformations for Long-Term Metric Visual Localization

机译:学习可匹配的可匹配图像转换,用于长期度量视觉定位

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Long-term metric self-localization is an essential capability of autonomous mobile robots, but remains challenging for vision-based systems due to appearance changes caused by lighting, weather, or seasonal variations. While experience-based mapping has proven to be an effective technique for bridging the 'appearance gap,' the number of experiences required for reliable metric localization over days or months can be very large, and methods for reducing the necessary number of experiences are needed for this approach to scale. Taking inspiration from color constancy theory, we learn a nonlinear RGB-to-grayscale mapping that explicitly maximizes the number of inlier feature matches for images captured under different lighting and weather conditions, and use it as a pre-processing step in a conventional single-experience localization pipeline to improve its robustness to appearance change. We train this mapping by approximating the target non-differentiable localization pipeline with a deep neural network, and find that incorporating a learned low-dimensional context feature can further improve cross-appearance feature matching. Using synthetic and real-world datasets, we demonstrate substantial improvements in localization performance across day-night cycles, enabling continuous metric localization over a 30-hour period using a single mapping experience, and allowing experience-based localization to scale to long deployments with dramatically reduced data requirements.
机译:长期度量自定位是自主移动机器人的基本能力,但由于照明,天气或季节性变化引起的外观变化,基于视觉系统仍然具有挑战性。虽然基于体验的映射已被证明是弥合“外观缺口”的有效技术,但在几天或数月内可靠的度量定位所需的经验数量非常大,并且需要减少必要数量的经验的方法这种缩放方法。采用色彩恒定理论的灵感,我们学习非线性RGB-to灰度映射,明确地最大化了在不同照明和天气条件下捕获的图像的Inlier特征匹配数,并将其用作传统单个 - 中的预处理步骤体验本地化管道,以提高其对外观变化的鲁棒性。我们通过用深神经网络近似目标不可微弱的定位管道训练该映射,并发现结合所学习的低维上下文特征可以进一步改善横向特征匹配。使用综合性和现实世界数据集,我们展示了日常夜间周期的本地化性能的大量改进,通过单个映射体验,在30小时内实现连续的公制定位,并允许基于体验的本地化以急剧扩展到长期部署减少数据要求。

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