图像字幕的联合学习:分布式环境中保护隐私的协作模型训练综述

Roshni Padate, M. Kalla, Ashutosh Gupta, Arvind Sharma
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引用次数: 0

摘要

本研究全面回顾了联合学习在分布式环境下图像字幕制作中的应用。研究重点关注隐私保护、数据位置性和协作模型训练等关键方面。研究探讨了联合学习的发展及其独特性,同时还研究了专门针对图像字幕的可用开源框架。该研究对用于图像字幕的联合学习的不同方法进行了分类,并展示了最近在不同领域的应用,包括医疗成像、边缘计算、自动驾驶汽车、社交媒体和跨领域图像分析。此外,还讨论了优化技术、安全分析和研究挑战,包括数据异构性、隐私保护、通信效率、有限标记、可扩展性和对抗恶意攻击的鲁棒性。这篇全面的综述有助于加深对用于图像字幕的联合学习的理解,并强调了该领域有待进一步研究和推进的领域。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Federated Learning for Image Captioning: A Comprehensive Review of Privacy-Preserving Collaborative Model Training in Distributed Environments
This study presents a comprehensive review of the use of federated learning in the context of image captioning in distributed environments. It focuses on key aspects such as privacy preservation, data locality, and collaborative model training. The evolution of federated learning and its unique characteristics are explored, along with an examination of available open-source frameworks specific to image captioning. The study categorizes different approaches to federated learning for image captioning and showcases recent applications in diverse domains, including medical imaging, edge computing, autonomous vehicles, social media, and cross-domain image analysis. Additionally, optimization techniques, security analysis, and research challenges are discussed, encompassing data heterogeneity, privacy preservation, communication efficiency, limited labeling, scalability, and robustness against adversarial attacks. This comprehensive review contributes to a deeper understanding of federated learning for image captioning and highlights areas for further research and advancement in the field.
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