论文标题

移动地面代理的城市范围街道到卫星图像地理定位

City-wide Street-to-Satellite Image Geolocalization of a Mobile Ground Agent

论文作者

Downes, Lena M., Kim, Dong-Ki, Steiner, Ted J., How, Jonathan P.

论文摘要

跨视图图像地理位置化通过将本地地面图像与高架卫星图像匹配而无需GPS,从而提供了代理的全局位置的估计。可靠地将地面图像与正确的卫星图像匹配,这是一项挑战,因为这些图像具有显着的视点差异。现有的作品表明在小区域的有限情况下进行了本地化,但尚未证明更广泛的定位。我们的方法称为广域地理定位(WAG),将神经网络与粒子过滤器相结合,以实现在GPS有限的环境中移动的代理的全球位置估计,从而有效地扩展到城市规模的区域。 WAG引入了Siamese网络的三项损失函数,以牢固匹配非中心的图像对,从而使较小的卫星图像数据库生成,从而使搜索区域的离散分散。还提出了一种修改的粒子滤波器加权方案,以提高定位准确性和收敛性。综上所述,WAG的网络训练和粒子滤清器加权方法达到了20米的城市尺度位置估计精度,与基线训练和加权方法相比,降低了98%。与文献的最新基线相比,WAG应用于较小的测试区域,将最终位置估计误差降低了64%。 WAG的搜索空间离散化还大大减少了存储和处理要求。

Cross-view image geolocalization provides an estimate of an agent's global position by matching a local ground image to an overhead satellite image without the need for GPS. It is challenging to reliably match a ground image to the correct satellite image since the images have significant viewpoint differences. Existing works have demonstrated localization in constrained scenarios over small areas but have not demonstrated wider-scale localization. Our approach, called Wide-Area Geolocalization (WAG), combines a neural network with a particle filter to achieve global position estimates for agents moving in GPS-denied environments, scaling efficiently to city-scale regions. WAG introduces a trinomial loss function for a Siamese network to robustly match non-centered image pairs and thus enables the generation of a smaller satellite image database by coarsely discretizing the search area. A modified particle filter weighting scheme is also presented to improve localization accuracy and convergence. Taken together, WAG's network training and particle filter weighting approach achieves city-scale position estimation accuracies on the order of 20 meters, a 98% reduction compared to a baseline training and weighting approach. Applied to a smaller-scale testing area, WAG reduces the final position estimation error by 64% compared to a state-of-the-art baseline from the literature. WAG's search space discretization additionally significantly reduces storage and processing requirements.

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