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Article: Fast-Convergent and Communication-Alleviated Heterogeneous Hierarchical Federated Learning in Autonomous Driving

TitleFast-Convergent and Communication-Alleviated Heterogeneous Hierarchical Federated Learning in Autonomous Driving
Authors
Keywordsaccelerating convergence
Gaussian distribution assumption
Hierarchical federated learning
inter-city data heterogeneity
performance-aware adaptive resource scheduling
reducing communication resource consumption
Issue Date1-Jan-2025
PublisherIEEE
Citation
IEEE Transactions on Intelligence Transportation Systems, 2025, v. 26, n. 7, p. 10496-10511 How to Cite?
AbstractStreet Scene Semantic Understanding (denoted as TriSU) is a complex task for autonomous driving (AD). However, inference model trained from data in a particular geographical region faces poor generalization when applied in other regions due to inter-city data domain-shift. Hierarchical Federated Learning (HFL) offers a potential solution for improving TriSU model generalization by collaborative privacy-preserving training over distributed datasets from different cities. Unfortunately, it suffers from slow convergence because the data from different cities are with disparate statistical properties. Going beyond existing HFL methods, we propose a Gaussian heterogeneous HFL algorithm (FedGau) to address inter-city data heterogeneity so that convergence can be accelerated. In the proposed FedGau algorithm, both single RGB image and RGB dataset are modelled as Gaussian distributions for aggregation weight design. This approach not only differentiates each RGB image by respective statistical distribution, but also exploits the statistics of dataset from each city in addition to the conventionally considered data volume. With the proposed approach, the convergence is accelerated by 35.5%-40.6% compared to existing state-of-the-art (SOTA) HFL methods. On the other hand, to reduce the involved communication resource, we further introduce a novel performance-aware adaptive resource scheduling (AdapRS) policy. Unlike the traditional static resource scheduling policy that exchanges a fixed number of models between two adjacent aggregations, AdapRS adjusts the number of model aggregation at different levels of HFL so that unnecessary communications are minimized. Extensive experiments demonstrate that AdapRS saves 29.65% communication overhead compared to conventional static resource scheduling policy while maintaining almost the same performance.
Persistent Identifierhttp://hdl.handle.net/10722/362003
ISSN
2023 Impact Factor: 7.9
2023 SCImago Journal Rankings: 2.580

 

DC FieldValueLanguage
dc.contributor.authorKou, Wei Bin-
dc.contributor.authorLin, Qingfeng-
dc.contributor.authorTang, Ming-
dc.contributor.authorYe, Rongguang-
dc.contributor.authorWang, Shuai-
dc.contributor.authorZhu, Guangxu-
dc.contributor.authorWu, Yik Chung-
dc.date.accessioned2025-09-18T00:36:12Z-
dc.date.available2025-09-18T00:36:12Z-
dc.date.issued2025-01-01-
dc.identifier.citationIEEE Transactions on Intelligence Transportation Systems, 2025, v. 26, n. 7, p. 10496-10511-
dc.identifier.issn1524-9050-
dc.identifier.urihttp://hdl.handle.net/10722/362003-
dc.description.abstractStreet Scene Semantic Understanding (denoted as TriSU) is a complex task for autonomous driving (AD). However, inference model trained from data in a particular geographical region faces poor generalization when applied in other regions due to inter-city data domain-shift. Hierarchical Federated Learning (HFL) offers a potential solution for improving TriSU model generalization by collaborative privacy-preserving training over distributed datasets from different cities. Unfortunately, it suffers from slow convergence because the data from different cities are with disparate statistical properties. Going beyond existing HFL methods, we propose a Gaussian heterogeneous HFL algorithm (FedGau) to address inter-city data heterogeneity so that convergence can be accelerated. In the proposed FedGau algorithm, both single RGB image and RGB dataset are modelled as Gaussian distributions for aggregation weight design. This approach not only differentiates each RGB image by respective statistical distribution, but also exploits the statistics of dataset from each city in addition to the conventionally considered data volume. With the proposed approach, the convergence is accelerated by 35.5%-40.6% compared to existing state-of-the-art (SOTA) HFL methods. On the other hand, to reduce the involved communication resource, we further introduce a novel performance-aware adaptive resource scheduling (AdapRS) policy. Unlike the traditional static resource scheduling policy that exchanges a fixed number of models between two adjacent aggregations, AdapRS adjusts the number of model aggregation at different levels of HFL so that unnecessary communications are minimized. Extensive experiments demonstrate that AdapRS saves 29.65% communication overhead compared to conventional static resource scheduling policy while maintaining almost the same performance.-
dc.languageeng-
dc.publisherIEEE-
dc.relation.ispartofIEEE Transactions on Intelligence Transportation Systems-
dc.rightsThis work is licensed under a Creative Commons Attribution-NonCommercial-NoDerivatives 4.0 International License.-
dc.subjectaccelerating convergence-
dc.subjectGaussian distribution assumption-
dc.subjectHierarchical federated learning-
dc.subjectinter-city data heterogeneity-
dc.subjectperformance-aware adaptive resource scheduling-
dc.subjectreducing communication resource consumption-
dc.titleFast-Convergent and Communication-Alleviated Heterogeneous Hierarchical Federated Learning in Autonomous Driving-
dc.typeArticle-
dc.identifier.doi10.1109/TITS.2025.3543235-
dc.identifier.scopuseid_2-s2.0-85219524715-
dc.identifier.volume26-
dc.identifier.issue7-
dc.identifier.spage10496-
dc.identifier.epage10511-
dc.identifier.eissn1558-0016-
dc.identifier.issnl1524-9050-

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