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[ARTICLE · art-53692] src=arxiv.org ↗ pub= topic=machine-learning verified=true sentiment=↑ positive

FedTR: Federated Learning Framework with Transfer Learning for Industrial Visual Inspection

Researchers introduced FedTR, a federated learning framework incorporating transfer learning for industrial visual inspection, achieving 95.5% word-level accuracy on homogeneous data and 94.2% on heterogeneous data for label defect identification. The framework addresses data privacy and limited data challenges by pre-training on public datasets and fine-tuning on distributed private data.

read1 min views1 publishedJul 10, 2026

arXiv:2607.08014v1 Announce Type: new Abstract: Federated learning (FL) is a collaborative learning scheme to train deep learning models, where collaborating parties can consolidate their models without sharing local data with other parties, hence preserving data privacy. Nevertheless, when implementing FL in Industrial visual inspection (IVI), the constraints posed by limited data availability and the intricate nature of the inspection tasks significantly impact the performance of the resulting model. This paper introduces FedTR, a novel FL framework incorporating transfer learning designed for Autonomous IVI, focusing on the challenging task of identifying label defects through end-to-end text recognition. Transfer learning is a method that leverages the knowledge of a pre-trained model to adapt to a different dataset. FedTR initially trains the model using a publicly available dataset, after which performs the essential federated learning process with model fine-tuning on the distributed and limited private data. Extensive experiment results demonstrate the effectiveness and feasibility of FedTR on private ink cartridge datasets for label defect identification. FedTR achieves an end-to-end text recognition word-level accuracy of 95.5% and 94.2% on homogeneous and heterogeneous data respectively. Additionally, it attains performance levels that are on par with those achieved through centralized training.

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