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LSFB: A Low-cost and Scalable Framework for Building Large-Scale Localization Benchmark

机译:LSFB:一种低成本和可扩展的框架,用于构建大规模定位基准

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With the rapid development of mobile sensor, network infrastructure and cloud computing, the scale of AR application scenario is expanding from small or medium scale to large-scale environments. Localization in the large-scale environment is a critical demand for the AR applications. Most of the commonly used localization techniques require quite a number of data with groundtruth localization for algorithm benchmarking or model training. The existed groundtruth collection methods can only be used in the outdoors, or require quite expensive equipments or special deployments in the environment, thus are not scalable to large-scale environments or to massively produce a large amount of groundtruth data. In this work, we propose LSFB, a novel low-cost and scalable frame-work to build localization benchmark in large-scale environments with groundtruth poses. The key is to build an accurate HD map of the environment. For each visual-inertial sequence captured in it, the groundtruth poses are obtained by joint optimization taking both the HD map and visual-inertial constraints. The experiments demonstrate the obtained groundtruth poses are accurate enough for AR applications. We use the proposed method to collect a dataset of both mobile phones and AR glass exploring in large-scale environments, and will release the dataset as a new localization benchmark for AR.
机译:随着移动传感器,网络基础设施和云计算的快速发展,AR应用方案的规模从小尺度扩展到大规模环境。大规模环境中的本地化是对AR应用的关键需求。大多数常用的本地化技术需要与算法基准测试或模型训练的基础定位有很多数据。存在的地基收集方法只能在室外使用,或者需要在环境中的相当昂贵的设备或特殊部署,因此不可扩展到大规模环境或大量地产生大量地接地数据。在这项工作中,我们提出了LSFB,这是一种新的低成本和可扩展的框架,可以在带有地面构成的大型环境中建立本地化基准。关键是建立一个完整的环境的高清地图。对于其中捕获的每种视觉惯性序列,通过接合优化来获得高清图和视觉惯性约束来获得地基姿势。实验证明所获得的Tounttruth姿势足够准确于AR应用。我们使用所提出的方法在大规模环境中收集移动电话和AR玻璃的数据集,并将数据集发布为AR的新本地化基准。

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