Wi-Fi fingerprinting becomes a dominant solution for large-scale indoor localization due to its major advantage of not requiring new infrastructure and dedicated devices. The number and the distribution of Reference Points (RPs) for the measurement of localization fingerprints like RSSI during the offline phase, however, greatly affects the localization accuracy; for instance, the UJIIndoorLoc is known to have the issue of uneven spatial distribution of RPs over buildings and floors. Data augmentation has been proposed as a feasible solution to not only improve the smaller number and the uneven distribution of RPs in the existing fingerprint databases but also reduce the labor and time costs of constructing new fingerprint databases. In this paper, we propose the multidimensional augmentation of fingerprint data for indoor localization in a large-scale building complex based on Multi-Output Gaussian Process (MOGP) and systematically investigate the impact of augmentation ratio as well as MOGP kernel functions and models with their hyperparameters on the performance of indoor localization using the UJIIndoorLoc database and the state-of-the-art neural network indoor localization model based on a hierarchical RNN. The investigation based on experimental results suggests that we can generate synthetic RSSI fingerprint data up to ten times the original data -- i.e., the augmentation ratio of 10 -- through the proposed multidimensional MOGP-based data augmentation without significantly affecting the indoor localization performance compared to that of the original data alone, which extends the spatial coverage of the combined RPs and thereby could improve the localization performance at the locations that are not part of the test dataset.
翻译:Wi-Fi 指纹采集成为大规模室内本地化的主要解决办法,因为其主要优势在于不要求新的基础设施和专用设备,因此在离线阶段用于测量像RSSI这样的本地化指纹的参考点的数量和分布大大影响了本地化的准确性;例如,据知UJIIndoorLoc对建筑和楼层RP的空间分布不均衡问题有系统调查,数据增强是一个可行的解决办法,不仅改善了现有指纹数据库中RP的较小数量和分布不均,还降低了建立新的指纹数据库的劳动力和时间成本。在本文件中,我们提议在多输出高斯进程(MOGP)的基础上,在大型建筑综合建筑群中,为室内本地化计量指纹数据进行多层面增强,并系统地调查扩增比率的影响,以及MOLP内层的功能和模型对基于现有指纹数据库的室内本地本地本地化综合化业绩的绩效进行超分量的测量,从而无法通过一级RNNPRPS的本地初始数据测试,因此,通过10号区域化数据库的初始数据测试结果可以通过10号区域化数据生成。