May 3, 2024, 4:15 a.m. | Sonakshi Garg, Hugo J\"onsson, Gustav Kalander, Axel Nilsson, Bhhaanu Pirange, Viktor Valadi, Johan \"Ostman

cs.CR updates on arXiv.org arxiv.org

arXiv:2405.01073v1 Announce Type: cross
Abstract: Federated Learning (FL) is a decentralized learning paradigm, enabling parties to collaboratively train models while keeping their data confidential. Within autonomous driving, it brings the potential of reducing data storage costs, reducing bandwidth requirements, and to accelerate the learning. FL is, however, susceptible to poisoning attacks. In this paper, we introduce two novel poisoning attacks on FL tailored to regression tasks within autonomous driving: FLStealth and Off-Track Attack (OTA). FLStealth, an untargeted attack, aims at …

accelerate arxiv attacks autonomous autonomous driving bandwidth confidential cs.ai cs.cr cs.cv cs.lg data data storage decentralized driving federated federated learning paradigm parties poisoning poisoning attacks requirements storage train

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