FedLoc: Federated Learning Framework for Data-Driven Cooperative
Localization and Location Data Processing
- URL: http://arxiv.org/abs/2003.03697v2
- Date: Mon, 25 May 2020 04:21:47 GMT
- Title: FedLoc: Federated Learning Framework for Data-Driven Cooperative
Localization and Location Data Processing
- Authors: Feng Yin, Zhidi Lin, Yue Xu, Qinglei Kong, Deshi Li, Sergios
Theodoridis, Shuguang (Robert) Cui
- Abstract summary: Data-driven learning model-based cooperative localization and location data processing are considered.
We first review state-of-the-art algorithms in the context of federated learning.
We demonstrate various practical use cases that are summarized from a mixture of standard, newly published, and unpublished works.
- Score: 12.518673970373422
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: In this overview paper, data-driven learning model-based cooperative
localization and location data processing are considered, in line with the
emerging machine learning and big data methods. We first review (1)
state-of-the-art algorithms in the context of federated learning, (2) two
widely used learning models, namely the deep neural network model and the
Gaussian process model, and (3) various distributed model hyper-parameter
optimization schemes. Then, we demonstrate various practical use cases that are
summarized from a mixture of standard, newly published, and unpublished works,
which cover a broad range of location services, including collaborative static
localization/fingerprinting, indoor target tracking, outdoor navigation using
low-sampling GPS, and spatio-temporal wireless traffic data modeling and
prediction. Experimental results show that near centralized data fitting- and
prediction performance can be achieved by a set of collaborative mobile users
running distributed algorithms. All the surveyed use cases fall under our newly
proposed Federated Localization (FedLoc) framework, which targets on
collaboratively building accurate location services without sacrificing user
privacy, in particular, sensitive information related to their geographical
trajectories. Future research directions are also discussed at the end of this
paper.
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