The development of highly accurate deep learning methods for indoor localization is often hindered by the unavailability of sufficient data measurements in the desired environment to perform model training. To overcome the challenge of collecting costly measurements, this paper proposes a cross-environment approach that compensates for insufficient labelled measurements via a joint semi-supervised and transfer learning technique to transfer, in an appropriate manner, the model obtained from a rich-data environment to the desired environment for which data is limited. This is achieved via a sequence of operations that exploit the similarity across environments to enhance unlabelled data model training of the desired environment. Numerical experiments demonstrate that the proposed cross-environment approach outperforms the conventional method, convolutional neural network (CNN), with a significant increase in localization accuracy, up to 43%. Moreover, with only 40% data measurements, the proposed cross-environment approach compensates for data inadequacy and replicates the localization accuracy of the conventional method, CNN, which uses 75% data measurements.
翻译:为室内本地化开发高度精确的深层学习方法往往因在理想环境中缺乏足够的数据测量而难以进行示范培训而受阻。为克服收集昂贵测量的难题,本文件建议采用跨环境方法,通过联合半监督和转让学习技术,以适当方式将从丰富数据环境中获得的模型转让给数据有限的理想环境,通过一系列操作,利用环境的相似性,加强对理想环境的无标签数据模型培训。数字实验表明,拟议的跨环境方法超过了常规方法,即动态神经网络(CNN),显著提高了本地化精确度,达到43%。此外,由于只有40%的数据测量,拟议的跨环境方法弥补了数据不足,复制了使用75%数据测量的常规方法CNN的本地化精度。