FedSup: A Communication-Efficient Federated Learning Fatigue Driving
Behaviors Supervision Framework
- URL: http://arxiv.org/abs/2104.12086v1
- Date: Sun, 25 Apr 2021 07:16:49 GMT
- Title: FedSup: A Communication-Efficient Federated Learning Fatigue Driving
Behaviors Supervision Framework
- Authors: Chen Zhao, Zhipeng Gao, Qian Wang, Kaile Xiao, Zijia Mo, M. Jamal Deen
- Abstract summary: FedSup is a client-edge-cloud framework for privacy and efficient fatigue detection.
Inspired by the federated learning technique, FedSup intelligently utilizes the collaboration between client, edge, and cloud server.
- Score: 10.38729333916008
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: With the proliferation of edge smart devices and the Internet of Vehicles
(IoV) technologies, intelligent fatigue detection has become one of the
most-used methods in our daily driving. To improve the performance of the
detection model, a series of techniques have been developed. However, existing
work still leaves much to be desired, such as privacy disclosure and
communication cost. To address these issues, we propose FedSup, a
client-edge-cloud framework for privacy and efficient fatigue detection.
Inspired by the federated learning technique, FedSup intelligently utilizes the
collaboration between client, edge, and cloud server to realizing dynamic model
optimization while protecting edge data privacy. Moreover, to reduce the
unnecessary system communication overhead, we further propose a Bayesian
convolutional neural network (BCNN) approximation strategy on the clients and
an uncertainty weighted aggregation algorithm on the cloud to enhance the
central model training efficiency. Extensive experiments demonstrate that the
FedSup framework is suitable for IoV scenarios and outperforms other mainstream
methods.
Related papers
- Hyperdimensional Computing Empowered Federated Foundation Model over Wireless Networks for Metaverse [56.384390765357004]
We propose an integrated federated split learning and hyperdimensional computing framework for emerging foundation models.
This novel approach reduces communication costs, computation load, and privacy risks, making it suitable for resource-constrained edge devices in the Metaverse.
arXiv Detail & Related papers (2024-08-26T17:03:14Z) - Optimizing Age of Information in Vehicular Edge Computing with Federated Graph Neural Network Multi-Agent Reinforcement Learning [44.17644657738893]
This paper focuses on the Age of Information (AoI) as a key metric for data freshness and explores task offloading issues for vehicles under RSU communication resource constraints.
We propose an innovative distributed federated learning framework combining Graph Neural Networks (GNN), named Federated Graph Neural Network Multi-Agent Reinforcement Learning (FGNN-MADRL) to optimize AoI across the system.
arXiv Detail & Related papers (2024-07-01T15:37:38Z) - FedCAda: Adaptive Client-Side Optimization for Accelerated and Stable Federated Learning [57.38427653043984]
Federated learning (FL) has emerged as a prominent approach for collaborative training of machine learning models across distributed clients.
We introduce FedCAda, an innovative federated client adaptive algorithm designed to tackle this challenge.
We demonstrate that FedCAda outperforms the state-of-the-art methods in terms of adaptability, convergence, stability, and overall performance.
arXiv Detail & Related papers (2024-05-20T06:12:33Z) - Effective Intrusion Detection in Heterogeneous Internet-of-Things Networks via Ensemble Knowledge Distillation-based Federated Learning [52.6706505729803]
We introduce Federated Learning (FL) to collaboratively train a decentralized shared model of Intrusion Detection Systems (IDS)
FLEKD enables a more flexible aggregation method than conventional model fusion techniques.
Experiment results show that the proposed approach outperforms local training and traditional FL in terms of both speed and performance.
arXiv Detail & Related papers (2024-01-22T14:16:37Z) - Sparse Federated Training of Object Detection in the Internet of
Vehicles [13.864554148921826]
Object detection is one of the key technologies in the Internet of Vehicles (IoV)
Current object detection methods are mostly based on centralized deep training, that is, the sensitive data obtained by edge devices need to be uploaded to the server.
We propose a federated learning-based framework, where well-trained local models are shared in the central server.
arXiv Detail & Related papers (2023-09-07T08:58:41Z) - Federated Learning-Empowered AI-Generated Content in Wireless Networks [58.48381827268331]
Federated learning (FL) can be leveraged to improve learning efficiency and achieve privacy protection for AIGC.
We present FL-based techniques for empowering AIGC, and aim to enable users to generate diverse, personalized, and high-quality content.
arXiv Detail & Related papers (2023-07-14T04:13:11Z) - FeDiSa: A Semi-asynchronous Federated Learning Framework for Power
System Fault and Cyberattack Discrimination [1.0621485365427565]
This paper proposes FeDiSa, a novel Semi-asynchronous Federated learning framework for power system faults and cyberattack Discrimination.
Experiments on the proposed framework using publicly available industrial control systems datasets reveal superior attack detection accuracy whilst preserving data confidentiality and minimizing the adverse effects of communication latency and stragglers.
arXiv Detail & Related papers (2023-03-28T13:34:38Z) - Personalizing Federated Learning with Over-the-Air Computations [84.8089761800994]
Federated edge learning is a promising technology to deploy intelligence at the edge of wireless networks in a privacy-preserving manner.
Under such a setting, multiple clients collaboratively train a global generic model under the coordination of an edge server.
This paper presents a distributed training paradigm that employs analog over-the-air computation to address the communication bottleneck.
arXiv Detail & Related papers (2023-02-24T08:41:19Z) - Federated Learning with Unreliable Clients: Performance Analysis and
Mechanism Design [76.29738151117583]
Federated Learning (FL) has become a promising tool for training effective machine learning models among distributed clients.
However, low quality models could be uploaded to the aggregator server by unreliable clients, leading to a degradation or even a collapse of training.
We model these unreliable behaviors of clients and propose a defensive mechanism to mitigate such a security risk.
arXiv Detail & Related papers (2021-05-10T08:02:27Z) - Towards Communication-efficient and Attack-Resistant Federated Edge
Learning for Industrial Internet of Things [40.20432511421245]
Federated Edge Learning (FEL) allows edge nodes to train a global deep learning model collaboratively for edge computing in the Industrial Internet of Things (IIoT)
FEL faces two critical challenges: communication overhead and data privacy.
We propose a communication-efficient and privacy-enhanced asynchronous FEL framework for edge computing in IIoT.
arXiv Detail & Related papers (2020-12-08T14:11:32Z)
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.