Few-Shot Transfer Learning for Device-Free Fingerprinting Indoor
Localization
- URL: http://arxiv.org/abs/2201.12656v1
- Date: Sat, 29 Jan 2022 20:49:45 GMT
- Title: Few-Shot Transfer Learning for Device-Free Fingerprinting Indoor
Localization
- Authors: Bing-Jia Chen, Ronald Y. Chang
- Abstract summary: Device-free wireless indoor localization is an essential technology for the Internet of Things (IoT)
A common challenge to fingerprint-based methods is data collection and labeling.
This paper proposes a few-shot transfer learning system that uses only a small amount of labeled data from the current environment.
- Score: 5.721124285238145
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Device-free wireless indoor localization is an essential technology for the
Internet of Things (IoT), and fingerprint-based methods are widely used. A
common challenge to fingerprint-based methods is data collection and labeling.
This paper proposes a few-shot transfer learning system that uses only a small
amount of labeled data from the current environment and reuses a large amount
of existing labeled data previously collected in other environments, thereby
significantly reducing the data collection and labeling cost for localization
in each new environment. The core method lies in graph neural network (GNN)
based few-shot transfer learning and its modifications. Experimental results
conducted on real-world environments show that the proposed system achieves
comparable performance to a convolutional neural network (CNN) model, with 40
times fewer labeled data.
Related papers
- Quanv4EO: Empowering Earth Observation by means of Quanvolutional Neural Networks [62.12107686529827]
This article highlights a significant shift towards leveraging quantum computing techniques in processing large volumes of remote sensing data.
The proposed Quanv4EO model introduces a quanvolution method for preprocessing multi-dimensional EO data.
Key findings suggest that the proposed model not only maintains high precision in image classification but also shows improvements of around 5% in EO use cases.
arXiv Detail & Related papers (2024-07-24T09:11:34Z) - An Automated Approach to Collecting and Labeling Time Series Data for Event Detection Using Elastic Node Hardware [18.15754187896287]
This paper introduces a novel embedded system designed to autonomously label sensor data directly on IoT devices.
We present an integrated hardware and software solution equipped with specialized labeling sensors that streamline the capture and labeling of diverse types of sensor data.
arXiv Detail & Related papers (2024-07-06T15:19:16Z) - Improved Indoor Localization with Machine Learning Techniques for IoT
applications [0.0]
This study employs machine learning algorithms in three phases: supervised regressors, supervised classifiers, and ensemble methods for RSSI-based indoor localization.
The experiment's outcomes provide insights into the effectiveness of different supervised machine learning techniques in terms of localization accuracy and robustness in indoor environments.
arXiv Detail & Related papers (2024-02-18T02:55:19Z) - Physical-Layer Semantic-Aware Network for Zero-Shot Wireless Sensing [74.12670841657038]
Device-free wireless sensing has recently attracted significant interest due to its potential to support a wide range of immersive human-machine interactive applications.
Data heterogeneity in wireless signals and data privacy regulation of distributed sensing have been considered as the major challenges that hinder the wide applications of wireless sensing in large area networking systems.
We propose a novel zero-shot wireless sensing solution that allows models constructed in one or a limited number of locations to be directly transferred to other locations without any labeled data.
arXiv Detail & Related papers (2023-12-08T13:50:30Z) - AFR-Net: Attention-Driven Fingerprint Recognition Network [47.87570819350573]
We improve initial studies on the use of vision transformers (ViT) for biometric recognition, including fingerprint recognition.
We propose a realignment strategy using local embeddings extracted from intermediate feature maps within the networks to refine the global embeddings in low certainty situations.
This strategy can be applied as a wrapper to any existing deep learning network (including attention-based, CNN-based, or both) to boost its performance.
arXiv Detail & Related papers (2022-11-25T05:10:39Z) - On-Device Domain Generalization [93.79736882489982]
Domain generalization is critical to on-device machine learning applications.
We find that knowledge distillation is a strong candidate for solving the problem.
We propose a simple idea called out-of-distribution knowledge distillation (OKD), which aims to teach the student how the teacher handles (synthetic) out-of-distribution data.
arXiv Detail & Related papers (2022-09-15T17:59:31Z) - Online Data Selection for Federated Learning with Limited Storage [53.46789303416799]
Federated Learning (FL) has been proposed to achieve distributed machine learning among networked devices.
The impact of on-device storage on the performance of FL is still not explored.
In this work, we take the first step to consider the online data selection for FL with limited on-device storage.
arXiv Detail & Related papers (2022-09-01T03:27:33Z) - Domain Adversarial Graph Convolutional Network Based on RSSI and
Crowdsensing for Indoor Localization [8.406788215294483]
We present a novel WiDAGCN model that can be trained using a small number of labeled site survey data and large amounts of unlabeled crowdsensed WiFi fingerprints.
Our system is evaluated using a public indoor localization dataset that includes multiple buildings.
arXiv Detail & Related papers (2022-04-06T08:06:27Z) - Addressing Gap between Training Data and Deployed Environment by
On-Device Learning [1.6258710071587594]
This article introduces a neural network based on on-device learning (ODL) approach to address this issue by retraining in deployed environments.
Our approach relies on semi-supervised sequential training of multiple neural networks tailored for low-end edge devices.
Experiments using vibration patterns of rotating machines demonstrate that retraining by ODL improves anomaly detection accuracy compared with a prediction-only deep neural network in a noisy environment.
arXiv Detail & Related papers (2022-03-02T12:59:33Z) - SignalNet: A Low Resolution Sinusoid Decomposition and Estimation
Network [79.04274563889548]
We propose SignalNet, a neural network architecture that detects the number of sinusoids and estimates their parameters from quantized in-phase and quadrature samples.
We introduce a worst-case learning threshold for comparing the results of our network relative to the underlying data distributions.
In simulation, we find that our algorithm is always able to surpass the threshold for three-bit data but often cannot exceed the threshold for one-bit data.
arXiv Detail & Related papers (2021-06-10T04:21:20Z) - Semi-Supervised Learning with GANs for Device-Free Fingerprinting Indoor
Localization [6.939464860621602]
Device-free wireless indoor localization is a key enabling technology for the Internet of Things (IoT)
This paper proposes a semi-supervised, generative adversarial network (GAN)-based device-free fingerprinting indoor localization system.
arXiv Detail & Related papers (2020-08-17T06:32:13Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.