学习对齐语义分割和2.5D地图用于地理定位

Anil Armagan, Martin Hirzer, P. Roth, V. Lepetit
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引用次数: 30

摘要

我们提出了一种在城市环境中进行地理定位的有效方法,从GPS提供的粗略位置估计开始,并使用周围建筑物的简单无纹理2.5D模型。我们的关键贡献是一种新的高效鲁棒的姿态优化方法:我们训练一个深度网络来预测最佳方向,以改进姿态估计,给定输入图像的语义分割和该估计的建筑物渲染。然后我们迭代地应用这个CNN,直到收敛到一个好的姿势。这种方法避免了使用难以获取和匹配的周围环境的参考图像,而2.5D模型则广泛可用。因此,我们可以将其应用于训练中看不到的地方。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Learning to Align Semantic Segmentation and 2.5D Maps for Geolocalization
We present an efficient method for geolocalization in urban environments starting from a coarse estimate of the location provided by a GPS and using a simple untextured 2.5D model of the surrounding buildings. Our key contribution is a novel efficient and robust method to optimize the pose: We train a Deep Network to predict the best direction to improve a pose estimate, given a semantic segmentation of the input image and a rendering of the buildings from this estimate. We then iteratively apply this CNN until converging to a good pose. This approach avoids the use of reference images of the surroundings, which are difficult to acquire and match, while 2.5D models are broadly available. We can therefore apply it to places unseen during training.
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